|
arXiv:1001.0015v2 [astro-ph.CO] 10 May 2010DRAFT VERSION MAY12, 2010 |
|
Preprint typesetusingL ATEX styleemulateapjv. 11/10/09 |
|
ACOMPREHENSIVE ANALYSISOFUNCERTAINTIESAFFECTING THE |
|
STELLARMASS –HALO MASS RELATIONFOR0 <z<4 |
|
PETERS. BEHROOZI1, CHARLIECONROY2, RISAH. WECHSLER1 |
|
Draftversion May12, 2010 |
|
ABSTRACT |
|
We conductacomprehensiveanalysisoftherelationshipbet weencentralgalaxiesandtheirhostdarkmatter |
|
halos, as characterized by the stellar mass – halo mass (SM–H M) relation, with rigorous consideration of |
|
uncertainties. Our analysis focuses on results from the abu ndance matching technique, which assumes that |
|
every dark matter halo or subhalo above a specific mass thresh old hosts one galaxy. We provide a robust |
|
estimate of the SM–HMrelationfor 0 <z<1 anddiscussthe quantitativeeffectsof uncertaintiesin o bserved |
|
galaxystellarmassfunctions(GSMFs)(includingstellarm assestimatesandcountinguncertainties),halomass |
|
functions (including cosmology and uncertainties from sub structure), and the abundance matching technique |
|
used to link galaxies to halos (including scatter in this con nection). Our analysis results in a robust estimate |
|
of the SM–HM relation and its evolution from z=0 to z=4. The sh ape and evolution are well constrained for |
|
z<1. The largest uncertainties at these redshifts are due to st ellar mass estimates (0.25 dex uncertainty in |
|
normalization); however, failure to account for scatter in stellar masses at fixed halo mass can lead to errors |
|
of similar magnitude in the SM–HM relation for central galax ies in massive halos. We also investigate the |
|
SM–HM relation to z= 4, although the shape of the relation at higher redshifts re mains fairly unconstrained |
|
whenuncertaintiesaretakenintoaccount. Wefindthatthein tegratedstarformationatagivenhalomasspeaks |
|
at 10-20%ofavailable baryonsforall redshiftsfrom0 to 4. T hispeak occursat a halomass of7 ×1011M⊙at |
|
z=0andthismassincreasesbyafactorof5to z=4. Atlowerandhighermasses,starformationissubstantia lly |
|
lessefficient,withstellarmassscalingas M∗∼M2.3 |
|
hatlowmassesand M∗∼M0.29 |
|
hathighmasses. Thetypical |
|
stellarmassforhaloswithmasslessthan1012M⊙hasincreasedby0 .3−0.45dexforhalossince z∼1. These |
|
resultswill providea powerfultoolto informgalaxyevolut ionmodels. |
|
Subject headings: dark matter — galaxies: abundances — galaxies: evolution — g alaxies: stellar content — |
|
methods: N-bodysimulations |
|
1.INTRODUCTION |
|
A variety of physical processes are thought to be respon- |
|
sible for the observed distribution of galaxy properties, a nd |
|
distinguishing among them is one of the principal goals of |
|
modern galaxy formation theory. Among the relevant mech- |
|
anisms are those responsible for galaxy growth, such as star |
|
formation and galaxy mergers, as well as those responsible |
|
forregulatinggrowth,includingenergeticfeedbackbysup er- |
|
novae, active galactic nuclei, cosmic ray pressure, and lon g |
|
gascoolingtimes. |
|
A fruitful approach to separating the influence of different |
|
mechanisms is to constrain the redshift–dependent relatio n |
|
between physical characteristics of galaxies, such as stel lar |
|
mass,andthemassoftheirdarkmatterhalos. Thisispossibl e |
|
because it is expected that many of these physical processes |
|
depend primarily on the mass of a galaxy’sdark matter halo. |
|
By connecting galaxies to their parent halos, one is able to |
|
moreclearlyidentifyandconstrainthephysicalprocesses re- |
|
sponsibleforgalaxygrowth. |
|
The galaxystellar mass – halo massrelation hasadditional |
|
utility because many properties of both galaxies and halos |
|
are tightly correlated with halo mass. In addition, the stel - |
|
lar mass – halo mass relation providesa mechanism for con- |
|
necting predictions for the halo mass function and the mass- |
|
1Kavli Institute for Particle Astrophysics and Cosmology; P hysics De- |
|
partment, Stanford University, and SLAC National Accelera tor Labora- |
|
tory, Stanford, CA 94305 |
|
2Department of Astrophysical Sciences, Princeton Universi ty, Prince- |
|
ton, NJ 08544dependent spatial clustering of halos to the abundances and |
|
clustering of galaxies. If a model for galaxy evolution is |
|
able to reproduce the intrinsic galaxy mass – halo mass re- |
|
lation in the correct cosmological model, then such a model |
|
will match both the observed stellar mass function and the |
|
stellar mass dependent clustering of galaxies. Simultane- |
|
ously matching these two observational quantities and thei r |
|
evolution has been difficult with either hydrodynamicalsim - |
|
ulations or semi-analytic models of galaxy formation (e.g. , |
|
Weinbergetal. 2004; Liet al.2007). |
|
There are several ways to constrain the galaxy mass – |
|
halo mass relation. The first type of approach attempts |
|
to directly measure the mass of galactic halos. Tech- |
|
niques include weak lensing (e.g., Guzik&Seljak 2002; |
|
Sheldonet al. 2004; Mandelbaumetal. 2006) and the use of |
|
satellite galaxy or stellar velocities as tracers of the hal o po- |
|
tentialwell(e.g.,Ashmanetal.1993;Zaritsky& White1994 ; |
|
Pradaet al. 2003; vandenBoschet al. 2004; Conroyet al. |
|
2007). While such methods are a relatively direct probe of |
|
halo mass, they are limited in dynamic range; current obser- |
|
vationsprobehalo massesfromroughly1012–1014M⊙at the |
|
present epoch, and a smaller range at higher redshift. A sec- |
|
ond approach is to identify groups and clusters of galaxies |
|
either through optical or X-ray selected cluster catalogs, and |
|
then directly measure their galaxy content (e.g., Lin&Mohr |
|
2004; Hansenet al. 2009; Yanget al. 2007). This is limited |
|
to relatively massive halos (although for optically identi fied |
|
groupsit could extend to lower masses as new surveysprobe |
|
dimmer galaxies in large enough volumes), and it also re- |
|
quires accurate knowledge of the mass–observable relation2 BEHROOZI,CONROY& WECHSLER |
|
(Yangetal. 2007; Hansenetal. 2009). |
|
An alternative approach is to assume that the properties |
|
of the halo population are known, for example from cos- |
|
mological simulations, and then find a functional form re- |
|
lating galaxies to halos which achieves agreement with a |
|
variety of observations. This approach is less direct but |
|
can be applied over a much larger dynamic range. Halo |
|
occupation (e.g., Berlind&Weinberg 2002; Bullocketal. |
|
2002; Cooray& Sheth 2002; Tinkeret al. 2005; Zhengetal. |
|
2007) and conditional luminosity function modeling (e.g., |
|
Yanget al.2003; Cooray2006) fallintothiscategory. |
|
In the past decade, a number of studies have found that |
|
this latter approach can be greatly simplified using a tech- |
|
nique called abundance matching. In its most basic form, |
|
the technique assigns the most massive (or the most lumi- |
|
nous) galaxiesto the most massive halos monotonically. The |
|
techniquethusrequiresasinputonlytheobservedabundanc e |
|
of galaxies as a function of mass, namely the galaxy stel- |
|
lar mass function (alternatively the galaxy luminosity fun c- |
|
tion) and the abundance of dark matter halos as a func- |
|
tion of mass, namely the halo mass function. This tech- |
|
nique has been shown to accurately reproduce a variety |
|
of observational results including various measures of the |
|
redshift– and scale–dependent spatial clustering of galax ies |
|
(Colínetal. 1999; Kravtsov& Klypin 1999; Neyrincketal. |
|
2004; Kravtsovet al. 2004; Vale&Ostriker 2004, 2006; |
|
Tasitsiomi etal. 2004; Conroyetal. 2006; Shankaretal. |
|
2006; Berrieret al. 2006; Marínet al. 2008; Guoet al. 2009; |
|
Mosteretal. 2009). In the context of this technique, not |
|
only central halos but also subhalos (halos contained withi n |
|
the virial radii of larger halos) are included in the matchin g |
|
process, meaning that satellite galaxies can be accounted f or |
|
withoutanyadditionalparameters. |
|
Applications of the abundance matching technique have |
|
typically focused on using the default modeling assumption s |
|
to derive statistical information about the galaxy – halo co n- |
|
nection. Uncertaintiesinthederivedgalaxymass–halomas s |
|
relationhavereceivedlittlesystematicattentioninthec ontext |
|
of this technique (though see Mosteret al. 2009, for a recent |
|
treatment of the attendant uncertainties). An accurate ass ess- |
|
ment of the uncertainties is necessary to make strong state- |
|
ments regarding the underlying physical processes respons i- |
|
bleforthederivedgalaxy–halorelation. Inthepresentwor k |
|
we undertake an exhaustive exploration of the uncertaintie s |
|
relevantinconstructingthegalaxystellarmass–halomass re- |
|
lationfromtheabundancematchingtechnique. Weconsidera |
|
rangeofuncertaintiesrelatedtotheobservationalstella rmass |
|
function,the theoretical halo mass function,and the under ly- |
|
ing technique of abundance matching. The resulting galaxy |
|
stellar mass – halo mass relation and associated uncertain- |
|
tieswill provideabenchmarkagainstwhichgalaxyevolutio n |
|
modelsmaybefruitfullytested. |
|
This paper is divided into several sections. In §2 we detail |
|
known sources of uncertainty which may affect our results. |
|
Our methodologyfor modeling the effects of uncertainties i s |
|
discussed in §3, providing simple conversions where possi- |
|
ble to allow for different modeling choices. We present our |
|
resulting estimates of the galaxy stellar mass – halo mass re - |
|
lation for z<1 in §4 and describe the contribution of each |
|
of the uncertainties to the overall error budget. Estimates for |
|
theevolutionoftherelationoutto z∼4,forwhichtheuncer- |
|
tainties are significantly less well-understood, are prese nted |
|
in §5. Finally, we discuss the implications of this work in §6 |
|
andsummarizeourconclusionsin§7.Stellar masses throughout are quoted assuming a Chabrier |
|
(2003) initial mass function (IMF), the stellar population |
|
synthesis models of Bruzual& Charlot (2003), and the age |
|
and dust models in Blanton& Roweis (2007). We consider |
|
multiple cosmologies in this paper, but the main results as- |
|
sume a WMAP5+SN+BAO concordance ΛCDM cosmology |
|
(Komatsuet al. 2009) with ΩM=0.27,ΩΛ=1−ΩM,h=0.7, |
|
σ8=0.8,andns=0.96. |
|
2.UNCERTAINTIESAFFECTINGTHESTELLARMASS |
|
TOHALO MASS RELATION |
|
Uncertainties in the abundance matching technique for as- |
|
signinggalaxiestodarkmatterhaloscanbeconceptuallyse p- |
|
arated into three classes. The first is uncertainty in the abu n- |
|
dance of galaxies as a function of stellar mass. This class |
|
includes both uncertainties in counting galaxies due to sho t |
|
noiseandsamplevariance,aswellasuncertaintiesinthest el- |
|
larmassestimatesthemselves. Thesecondclassconcernsth e |
|
darkmatter halos, andincludesuncertaintiesin cosmologi cal |
|
parameters,theimpactofbaryoncondensation,andsubstru c- |
|
ture. Finally, there are uncertainties in the process of mat ch- |
|
inggalaxiesto halosarising primarilyfromthe intrinsics cat- |
|
ter between galaxystellar mass and halo mass. Each of these |
|
sources of uncertainty are described in detail below. The de - |
|
tailedmodelingoftheseuncertaintiesis describedin§3. |
|
2.1.UncertaintiesintheStellarMassFunction |
|
Galaxystellar massesare notmeasureddirectly,but are in- |
|
stead inferred from photometry and/or spectra. In particul ar, |
|
as the observed stellar light is a function of many physical |
|
processes (e.g., stellar evolution, star formation histor y and |
|
metal–enrichmenthistory,andwavelength–dependentdust at- |
|
tenuation),stellarmassesareestimatedviacomplicatedm od- |
|
els to find the best fit to galaxy observations in a very large |
|
parameter space. Assumptions and simplifications in these |
|
models, along with the fact that the best fit may be only one |
|
ofanumberoflikelypossibilities,meanthattherecanbesu b- |
|
stantialuncertaintiesin calculatedstellar masses. |
|
Different types of observations can yield different uncer- |
|
taintiesinthesecalculations. Spectroscopicsurveysgen erally |
|
recover more spectral features per galaxy and more accurate |
|
redshifts than photometric surveys. However, spectroscop y |
|
requires substantially more telescope time than photometr y. |
|
Therefore, spectroscopic samples tend to be limited both in |
|
area and depth, which translates into limitations in both vo l- |
|
ume and the minimum stellar mass probed. An additional |
|
problem for spectroscopic surveys such as the Sloan Digital |
|
SkySurvey(SDSS,Yorket al.2000) isthatthespectraprobe |
|
only the central regionsof galaxies (the SDSS spectra gathe r |
|
onaverage1 /3 of the total flux fromgalaxiesat z=0.1). For |
|
galaxies containing both a bulge and a disk, or galaxies with |
|
radial gradients, the spectra will therefore not provide a f air |
|
sampleoftheentiregalaxy(e.g.,Kewleyet al.2005);furth er- |
|
more, this bias will be a function of redshift. For these rea- |
|
sons,especiallyforrobustcomparisonsofevolution,we co n- |
|
fine thispaperto photometric–basedstellar masses; howeve r, |
|
samples with spectroscopic redshifts are used where avail- |
|
able. |
|
2.1.1.Principal Uncertainties inStellar Mass Functions |
|
In this paper, we analyze seven main sources of uncertain- |
|
ties in stellar mass functions applicable to photometric su r- |
|
veys,listedbelowinroughorderofimportance.UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 3 |
|
1.Choice of stellar initial mass function (IMF): The lu- |
|
minosity of stars scales as their mass to a large power |
|
(dlnL/dlnM∼3.5),whiletheIMF,definedasthenum- |
|
berofstarsformedperunitmass,scalesapproximately |
|
asξ∝M−2.3(Salpeter 1955). Thus, the light from a |
|
galaxy is dominated by the most massive stars, while |
|
the total stellar mass is dominated by the lowest mass |
|
stars. This fact, which has been known for decades |
|
(e.g., Tinsley&Gunn 1976), implies that the assumed |
|
form of the IMF at M/lessorsimilar0.5M⊙will have no effect on |
|
the integratedlight from galaxies, but will have a large |
|
effectonthetotalstellarmass. Nonetheless,constraints |
|
onthe total dynamicalmassofspheroidalsystemspro- |
|
vide a valuable independent check on the form of the |
|
IMF at low masses. Cappellariet al. (2006) find, for |
|
example, that the IMF proposed by Chabrier (2003) |
|
for the Solar neighborhood is consistent with dynam- |
|
ical constraintsonmassesofnearbyellipticals. |
|
We do not marginalize over IMFs in our error calcula- |
|
tionsforthereasonthatitisrelativelysimpletoconvert |
|
fromourchoiceofIMF(Chabrier2003)tootherIMFs. |
|
For our purposes the IMF becomes a serious source |
|
of systematic uncertainty only if the IMF varies with |
|
galaxy properties or if it evolves. It should be noted, |
|
however,thattheIMF canalsointroducemorecompli- |
|
catedsystematiceffectsassociatedwiththeinferredstar |
|
formationrate,whichmayinturnimpactstellarmasses |
|
in non–trivialways(e.g.Conroyetal. 2010). |
|
2.Choice of Stellar Population Synthesis (SPS) model: |
|
SPS modeling efforts have grown substantially in so- |
|
phistication in the past decade (e.g. Leithereretal. |
|
1999; Bruzual&Charlot 2003; LeBorgneet al. 2004; |
|
Maraston 2005). Yet, significant uncertainties re- |
|
main (e.g., Charlotetal. 1996; Charlot 1996; Yi 2003; |
|
Lee etal. 2007; Conroyetal. 2009). Treatments of |
|
convection vary, leading to different main sequence |
|
turn off times for intermediate mass stars. Advanced |
|
stages of stellar evolution, including blue stragglers, |
|
thermally–pulsating AGB stars (TP–AGB), and hori- |
|
zontal branch stars, are poorly understood, both obser- |
|
vationally and theoretically. The theoretical spectral |
|
libraries contain known deficiencies, especially for M |
|
giants, where the effective temperatures are low and |
|
where hydrodynamic effects become important. Em- |
|
pirical stellar libraries to some extent circumventthese |
|
issues, althoughthey are plaguedbyincompletecover- |
|
age in the HR diagram and difficulties associated with |
|
deriving stellar parameters. See Conroyet al. (2009) |
|
andPercival&Salaris(2009) forrecentreviews. |
|
Differentstellarpopulationsynthesismodelstreatthese |
|
issues differently, which can result in large system- |
|
atic differences in the derived stellar mass. For |
|
instance, the model of Maraston (2005) compared |
|
to Bruzual&Charlot (2003) has systematic differ- |
|
ences of 0.1dex in stellar mass (Salimbeniet al. 2009; |
|
Pérez-Gonzálezetal. 2008). However,Salimbenietal. |
|
(2009) reports that the model in Bruzual (2007) (with |
|
a revisedtreatmentofTP-AGBstars)yieldssystematic |
|
differencesinstellarmassrelativetoBruzual&Charlot |
|
(2003), which ranges from 0.05dex for 1011M⊙galax- |
|
iesto0.3dexfor109.5M⊙galaxies. Conroyet al.(2009) |
|
show thatuncertaintyin theluminosityofthe TP-AGBphasecanshiftstellar massesbyasmuchas ±0.2dex. |
|
3.Parameterization of star formation histories: In or- |
|
der to estimate stellar masses, model libraries are con- |
|
structed with a large range in star formation histories |
|
(SFHs),dustattenuation(seebelow),and,oftenbutnot |
|
always,metallicity. Theadoptedfunctionalformofthe |
|
SFHisanothersourceofsystematicuncertainty,astyp- |
|
ically very simple functional forms are assumed. Sev- |
|
eral authors have investigated various aspects of this |
|
problem. When attempting to model observed pho- |
|
tometry, Pérez-Gonzálezet al. (2008) found that a sin- |
|
gle stellar population model (in particular, star forma- |
|
tion proportional to e−t/τ, which is a commonly-used |
|
parameterization) systematically underpredicts stellar |
|
mass by 0.18 dex comparedto a double stellar popula- |
|
tion model (exponentially decaying star formation fol- |
|
lowed by a later starburst). The particular parameteri- |
|
zation of SFHs may also lead to systematic differences |
|
asafunctionofstellarmass. Leeet al.(2009)analyzed |
|
a sample of mock Lyman–break galaxies at z∼4−5 |
|
and found that simple SFHs produced best–fit stellar |
|
masses that were under or overestimated by ∼ ±50% |
|
dependingontherest-framegalaxycolor. Thisbiaswas |
|
attributedto thechaoticSFHsofthemockgalaxies. |
|
4.Choice of dust attenuation model: Because dust red- |
|
dens starlight, it is difficult to separate the effects of |
|
dustfromstellarpopulationeffects,especiallywhenfit- |
|
ting optical photometry. The effects of dust are also |
|
knowntochangedependingongalaxyinclination(e.g., |
|
Driveret al. 2007). Hence, the choice of dust attenu- |
|
ation law has a nontrivial effect on the inferred stel- |
|
lar population ages and, consequently, star formation |
|
histories derived from photometric and even spectro- |
|
scopic surveys (Panteret al. 2007). In terms of the |
|
effect on stellar masses, Pérez-Gonzálezetal. (2008) |
|
compared the dust models of Calzetti et al. (2000) and |
|
Charlot&Fall (2000), finding a systematic difference |
|
of 0.10dex. Panteret al. (2007) found a similar differ- |
|
ence between Calzetti et al. and models based on ex- |
|
tinction curves from the Small and Large Magellanic |
|
Clouds. The effectsof varyingdust attenuationmodels |
|
have also been explored recently by Marchesiniet al. |
|
(2009) and Muzzinet al. (2009), with similar results. |
|
We have used the stellar population fitting proce- |
|
dure described in Conroyet al. (2009) to compare the |
|
Calzetti et al. dust attenuation law to the dust model |
|
used in the kcorrect package (Blanton&Roweis |
|
2007). We find a median offset of 0.02dex but also a |
|
systematic trend such that two galaxies whose stellar |
|
massesareestimatedwithCalzettidustattenuationand |
|
are separated by 1.0dex will have kcorrect masses |
|
separatedby(onaverage)only0.92dex. |
|
5.Statistical errors in individual stellar mass estimates: |
|
Stellar mass estimates for each galaxy are subject to |
|
statistical errors due to uncertainty in photometry as |
|
well as uncertainty in the SPS parameters for a given |
|
set of model assumptions. We treat this here as a ran- |
|
dom statistical error. While it may seem that random |
|
scatter in individual stellar masses should on average |
|
have no systematic effect, it in fact introduces a sys- |
|
tematic error analogous to Eddington bias (Eddington4 BEHROOZI,CONROY& WECHSLER |
|
1940) observed in luminosity functions. As the stellar |
|
mass function drops off steeply beyond a certain char- |
|
acteristic stellar mass, there are many more low stellar |
|
mass galaxies that can be up-scattered than there are |
|
high stellar mass galaxies that can be down-scattered |
|
by errors in stellar mass estimates. This asymmetric |
|
scatter implies that the drop-off in number density at |
|
highmassesbecomesshallowerinthepresenceofscat- |
|
ter. We discuss this effect in detail in §3.1.2 (see also |
|
the AppendixinCattaneoet al.2008). |
|
6.Sample variance: Surveysof finite regionsof the Uni- |
|
verse are susceptible to large–scale fluctuations in the |
|
number density of galaxies. This is no longer a dom- |
|
inant source of uncertainty for the volumes probed at |
|
lowredshiftbytheSDSS,butitisanimportantconsid- |
|
eration for higher–redshift surveys, which cover much |
|
smaller comoving volumes. Most authors who con- |
|
sidersamplevarianceattempttominimizeitbyaverag- |
|
ingoverseveralfields(e.g.,Pérez-Gonzálezetal.2008; |
|
Marchesinietal. 2009). Very few surveys at z>0 at- |
|
tempt to estimate the magnitude of the error except by |
|
computing the field–to–field variance, which is often |
|
an underestimate when insufficient volume is probed |
|
(Crocceet al.2009). Wedetailamoreaccuratemethod |
|
based on simulations to model the error arising from |
|
samplevariancein §3.2.4. |
|
7.Redshift errors: Photometric redshift errors blur the |
|
distinction between GSMFs at different redshifts. |
|
While a galaxy may be scattered either up or down in |
|
redshift space, volume-limited survey lightcones will |
|
contain larger numbers of galaxies at higher redshifts, |
|
meaning that the GSMF as reported at lower redshifts |
|
willbeartificiallyinflated. Moreover,asgalaxiesatear- |
|
liertimeshavelowerstellarmasses,surveyswilltendto |
|
report artificially larger faint-end slopes in the GSMF. |
|
However, as these errors are well known, it is easy to |
|
correct for their effects on the stellar mass function, |
|
as has been done for the data in Pérez-Gonzálezetal. |
|
(2008) (seetheappendixofPérez-Gonzálezet al.2005 |
|
fordetailsonthisprocess). |
|
For completeness, we remark that galaxy-galaxy lensing |
|
will also result in systematic errorsin the GSMF at high red- |
|
shifts because galaxy magnification will result in higher ob - |
|
served luminosities. However, from ray-tracing studies of |
|
the Millennium simulation (Hilbertet al. 2007), the expect ed |
|
scatter in galaxystellar masses fromlensingis minimal (e. g., |
|
0.04 dex at z= 1) compared to the other sources of scatter |
|
above (e.g., 0.25 dex from different model choices). For tha t |
|
reason,we donot modelgalaxy-galaxylensing effectsin thi s |
|
paper. |
|
2.1.2.Additional Systematics atz >1 |
|
Recently, it has become clear that current estimates of |
|
the evolution in the cosmic SFR density are not consistent |
|
with estimates of the evolution of the stellar mass density |
|
atz>1 (Nagamineet al. 2006; Hopkins&Beacom 2006; |
|
Pérez-Gonzálezet al. 2008; Wilkinset al. 2008a). The ori- |
|
gin of this discrepancy is currently a matter of debate. One |
|
solution involves allowing for an evolving IMF with red- |
|
shift (Davé 2008; Wilkinsetal. 2008a). While such a so- |
|
lution is controversial, a number of independent lines ofevidence suggest that the IMF was different at high red- |
|
shift(Lucatelloetal. 2005;Tumlinson2007a,b; vanDokkum |
|
2008). Reddy&Steidel (2009) offer a more mundane ex- |
|
planation for the discrepancy. They appeal to luminosity– |
|
dependentreddeningcorrectionsin the ultraviolet lumino sity |
|
functionsat highredshift,anddemonstratethat the purpor ted |
|
discrepancythenlargelyvanishes. |
|
In contrast to results at z>1, there does seem to be |
|
an accord that for z<1 both the integrated SFR and the |
|
total stellar mass are in good agreement if one assumes |
|
(as we have) a Chabrier (2003) IMF (see Wilkinset al. |
|
2008b; Pérez-Gonzálezetal. 2008; Hopkins& Beacom |
|
2006;Nagamineet al.2006; Conroy&Wechsler 2009). |
|
Because of the discrepancy between reported SFRs and |
|
stellar massesin the literature,it is clearthat estimates ofun- |
|
certaintiesin galaxystellar mass functionsandSFRs at z>1 |
|
tend to underestimate the true uncertainties; for this reas on, |
|
we separately analyze results for z<1 in §4 and z>1 in §5 |
|
ofthispaper. |
|
2.2.Uncertaintiesin theHaloMassFunction |
|
Darkmatterhalopropertiesoverthemassrange1010−1015 |
|
M⊙have been extensively analyzed in simulations (e.g., |
|
Jenkinset al. 2001; Warrenet al. 2006; Tinkeret al. 2008), |
|
and the overall cosmology has been constrained by probes |
|
such as WMAP (Spergeletal. 2003; Komatsuetal. 2009). |
|
As such, uncertainties in the halo mass function have on the |
|
wholemuch less impact thanuncertaintiesin the stellar mas s |
|
function. We present our primary results for a fixed cosmol- |
|
ogy (WMAP5), but we also calculate the impact of uncer- |
|
tain cosmological parameters on our error bars. We do not |
|
marginalize over the mass function uncertainties for a give n |
|
cosmology,astherelevantuncertaintiesareconstraineda tthe |
|
5% level (when baryonic effects are neglected, see below; |
|
Tinkeret al. 2008). Additionally, in Appendix A, a simple |
|
method is described to convert our results to a different cos - |
|
mology using an arbitrary mass function. For completeness, |
|
wementionthethreemostsignificantuncertaintieshere: |
|
1.Cosmologicalmodel: Thestellarmass–halomassrela- |
|
tionhasdependenceoncosmologicalparametersdueto |
|
the resulting differences in halo number densities. We |
|
investigate this both by calculating the relation for two |
|
specific cosmological modes (WMAP1 and WMAP5 |
|
parameters)andthenbycalculatingtheuncertaintiesin |
|
the relation over the full range of cosmologiesallowed |
|
by WMAP5 data. We findthat in all casesthese uncer- |
|
tainties are small compared to the uncertainties inher- |
|
entinstellarmassmodeling(§2.1.1),althoughtheyare |
|
larger than the statistical errors for typical halo masses |
|
at lowredshift. |
|
2.Uncertainties in substructure identification: Different |
|
simulations have different methods of identifying and |
|
assigning masses to substructure. Our matching meth- |
|
ods make use only of the subhalo mass at the epoch |
|
of accretion ( Macc) as this results in a better match to |
|
clustering and pair–count results (Conroyetal. 2006; |
|
Berrieret al. 2006), so we are largely immune to the |
|
problem of different methods for calculating subhalo |
|
masses. Ofgreaterconcernistheabilitytoreliablyfol- |
|
lowsubhalosinsimulationsastheyaretidallystripped. |
|
Two related issues apply here. The first is that it is not |
|
clear how to account for subhaloswhich fall below theUncertaintiesAffectingtheStellar Mass–HaloMassRelati on 5 |
|
resolution limit of the simulation. The second is that |
|
theformationofgalaxieswilldramaticallyincreasethe |
|
binding energy of the central regions of subhalos, po- |
|
tentiallymakingthemmoreresilienttotidaldisruption. |
|
Hydrodynamicsimulationssuggestthatthislattereffect |
|
issmallexceptforsubhalosthatorbitnearthecentersof |
|
themostmassiveclusters(Weinbergetal.2008). How- |
|
ever, while these details are important for accurately |
|
predicting the clustering strength on small scales ( /lessorsimilar1 |
|
Mpc), they are not a substantial source of uncertainty |
|
fortheglobalhalomass—stellarmassrelationbecause |
|
satellites are always sub-dominant ( /lessorsimilar20%) by num- |
|
ber. We discuss the analytic method we use to model |
|
the satellite contribution to the halo mass function in |
|
§3.2.2. |
|
3.Baryonic physics: Recent work by Staneket al. (2009) |
|
suggests that gas physics can affect halo masses rela- |
|
tive to dark matter-onlysimulations by -16% to +17%, |
|
leading to number density shifts of up to 30% in the |
|
halo massfunctionat 1014M⊙. Withoutevidencefora |
|
clear bias in one direction or the other—the models of |
|
gasphysicsstillremaintoouncertain—wedonotapply |
|
a correction for this effect in our mass functions. Un- |
|
certainties of this magnitude are larger than the statis- |
|
tical errors in individual stellar masses at low redshift, |
|
but are still small in comparisonto systematic errorsin |
|
calculatingstellar masses. |
|
For completeness, we note that the effects of sample vari- |
|
ance on halo mass functions estimated from simulations are |
|
small. Current simulations readily probe volumes of 1000 |
|
(h−1Mpc)3(Tinkeretal. 2008), and so the effects of sample |
|
varianceonthe halomassfunctionaredwarfedbythe effects |
|
of sample variance on the stellar mass function; we therefor e |
|
donotanalyzethemseparatelyinthispaper. |
|
We also remark on the issue of mass definitions. Al- |
|
though abundance matching implies matching the most mas- |
|
sive galaxiesto the most massivehalos, thereis little cons en- |
|
susonwhichhalomassdefinitiontouse,withpopularchoices |
|
beingMvir(mass within the virial radius), M200(mass within |
|
a sphere with mean density 200 ρcrit), andMfof(mass deter- |
|
minedby a friends-of-friendsparticle linkingalgorithm) . We |
|
chooseMvirfor this paper and note that the largest effect of |
|
choosinganothermassalgorithmwill beapurelydefinitiona l |
|
shift in halo masses. We expect that scatter between any two |
|
of these mass definitions is degenerate with and smaller than |
|
the amountofscatter in stellar massesat fixedhalo mass(the |
|
lattereffectisdiscussedin§2.3). |
|
2.3.Uncertaintiesin AbundanceMatching |
|
Finally, there are two primary uncertainties concerningth e |
|
abundancematchingtechniqueitself: |
|
1.Nonzero scatter in assigning galaxies to halos: While |
|
host halo mass is strongly correlated with stellar mass, |
|
the correlation is not perfect. At a given halo mass, |
|
the halomergerhistory,angularmomentumproperties, |
|
and cooling and feedback processes can induce scatter |
|
between halo mass and galaxystellar mass. This is ex- |
|
pectedtoresultinscatterinstellarof ∼0.1–0.2dexata |
|
given halo mass, see §3.3.1 for discussion. The scatter |
|
between halo mass and stellar mass will have system- |
|
atic effects on the mean relation for reasons analogousto those mentioned for statistical error in stellar mass |
|
measurements. At the high mass end where both the |
|
halo and stellar mass functions are exponential, scat- |
|
ter in stellar mass at fixed halo mass (or vice versa) |
|
will alter the average relation because there are more |
|
low mass galaxies that are upscattered than high mass |
|
galaxiesthataredownscattered. |
|
2.Uncertainty in Assigning Galaxies to Satellite Halos: |
|
It is not clear that the halo mass — stellar mass rela- |
|
tion should be the same for satellite and central galax- |
|
ies. Once a halo is accreted onto a larger halo, it starts |
|
to lose halo mass because of dynamicaleffects such as |
|
tidal stripping. While stripping of the halo appears to |
|
be a relatively dramatic process (e.g., Kravtsovet al. |
|
2004), the stripping of the stellar component proba- |
|
bly does not occur unless the satellite passes very near |
|
to the central object because the stellar component is |
|
muchmoretightlyboundthanthehalo. Itisclearfrom |
|
the observed color–density relation (Dressler 1980; |
|
Postman&Geller 1984; Hansenet al. 2009) that star |
|
formation in satellite galaxies must eventually cease |
|
with respect to galaxiesin the field. It is less clear how |
|
quicklystar formationceases, andwhetherornot there |
|
is a burst ofstar formationuponaccretion. All ofthese |
|
issues can potentially alter the relation between halo |
|
andstellarmassforsatellites(althoughthemodelingre- |
|
sults ofWang etal. 2006suggestthat the halo–satellite |
|
relation is indistinguishable from the overall galaxy– |
|
halorelation). |
|
3.METHODOLOGY |
|
Ourprimarygoalistoprovidearobustestimateofthestel- |
|
lar mass – halo mass relation over a significant fraction of |
|
cosmic time via the abundance matching technique. We aim |
|
to constructthis relation by taking into account all of the r el- |
|
evant sources of uncertainty. This section describes in de- |
|
tail a number of aspects of our methodology, including our |
|
approach for incorporating uncertainties in the stellar ma ss |
|
function ( §3.1), a summary of the adopted halo mass func- |
|
tionsand associateduncertainties( §3.2), the uncertaintiesas- |
|
sociatedwithabundancematching(§3.3),ourchoiceoffunc - |
|
tionalformforthestellarmass–halomassrelation,includ ing |
|
adiscussionofwhycertainfunctionsshouldbepreferredov er |
|
others (§3.4), and the Markov Chain Monte Carlo parameter |
|
estimationtechnique( §3.5). Forreadersinterestedinthegen- |
|
eral outline of our process but not the details, we conclude |
|
witha briefsummaryofourmethodology(§3.6). |
|
3.1.ModelingStellarMassFunctionUncertainties |
|
Asdiscussedin§2,thereareseveralclassesofuncertainti es |
|
affectingthewaythestellarmassfunctionisusedintheabu n- |
|
dance matching process. In this section, we discuss system- |
|
aticshiftsinstellarmassestimatesandtheeffectsofstat istical |
|
errorsonthestellar massfunction. |
|
3.1.1.Modeling Systematic ShiftsinStellar Mass Estimates |
|
Most studies on the GSMF report Schechter function fits |
|
as well as individual data points; many also provide statist i- |
|
calerrors. However,evenwhensystematicerrorsarereport ed |
|
(either in Schechter parameters or at individual data point s), |
|
the systematic error estimates are of limited value unless o ne |
|
is also able to model shifts in the GSMF caused by such er- |
|
rors.6 BEHROOZI,CONROY& WECHSLER |
|
Fortunately, based on the discussion in §2.1.1, there seem |
|
to be two main classes of systematic errors causing shifts in |
|
theGSMF: |
|
1. Over/underestimationofallstellarmassesbyaconstant |
|
factorµ. This appears to cover the majority of errors, |
|
includingmostdifferencesinSPSmodeling,dustatten- |
|
uationassumptions,andstellar populationagemodels. |
|
2. Over/underestimation of stellar masses by a factor |
|
which depends linearly on the logarithm of the stel- |
|
lar mass (i.e., depends on a power of the stellar mass). |
|
Thiscoversthemajorityoftheremainingdiscrepancies |
|
between different SPS models and different stellar age |
|
models. |
|
Bothformsoferrorare modeledwith theequation |
|
log10/parenleftbiggM∗,meas |
|
M∗,true/parenrightbigg |
|
=µ+κlog10/parenleftbiggM∗,true |
|
M0/parenrightbigg |
|
.(1) |
|
Without loss of generality, we may take M0= 1011.3M⊙(the |
|
fixed point of the variation between the Bruzual 2007 and |
|
Bruzual& Charlot 2003 models found by Salimbenietal. |
|
2009), allowing the prior on M0to be absorbed into the prior |
|
onµ. |
|
For the prior on µ, we consider four contributing sources |
|
of uncertainty. We adopt estimates of the uncertainty from |
|
the SPS model( ≈0.1dex),the dust model( ≈0.1dex),and as- |
|
sumptions about the star formation history ( ≈0.2dex) from |
|
Pérez-Gonzálezet al. (2008) as detailed in §2.1.1. Additio n- |
|
ally, we have the variation in κlog10(M0) (at most 0.1dex, as |
|
|κ|/lessorsimilar0.15 — see below). Assuming that these are statisti- |
|
cally independent, they combine to give a total uncertainty |
|
of 0.25dex, which is consistent with the accepted range for |
|
systematicuncertaintiesinstellarmass(Pérez-González etal. |
|
2008; Kannappan& Gawiser 2007; vanderWel et al. 2006; |
|
Marchesiniet al. 2009). For lack of adequate information |
|
(i.e., different models) to infer a more complicated distri bu- |
|
tion, we assume that µhas a Gaussian prior. As more stud- |
|
ies ofthe overallsystematic shift µbecomeavailable,ouras- |
|
sumptions for the prior on µand the probability distribution |
|
will likely need corrections. We remark, however, that our |
|
results can easily be converted to a different assumption fo r |
|
µ, asµsimply imparts a uniform shift in the intrinsic stellar |
|
massesrelativeto theobservedstellar masses. |
|
For the prior on κ, the result of Salimbeniet al. (2009) |
|
would suggest |κ|/lessorsimilar0.15. As mentionedin §2.1.1, we found |
|
that|κ| ≈0.08 between the Blanton& Roweis (2007) and |
|
Calzetti et al.(2000)modelsfordustattenuation. Li &Whit e |
|
(2009) finds |κ|/lessorsimilar0.10 between Blanton& Roweis (2007) |
|
and Bell etal. (2003) stellar masses. Without a large num- |
|
ber of other comparisons, it is difficult to robustly determi ne |
|
the priordistributionfor κ; however,motivatedby the results |
|
just mentioned, we assume that the prior on κis a Gaussian |
|
ofwidth0.10centeredat0.0. |
|
We remark that some authors have considered much more |
|
complicated parameterizations of the systematic error. Fo r |
|
example, Li &White (2009) considers a four-parameter hy- |
|
perbolic tangent fit to differences in the GSMF caused by |
|
different SPS models, as well as a five-parameter quartic fit. |
|
However,wedonotconsiderhigher-ordermodelsforsystem- |
|
atic errors for several reasons. First, given that second- a nd |
|
higher-ordercorrectionswill resultonlyinverysmall cor rec- |
|
tions to the stellar masses in comparison to the zeroth-orde rcorrection ( µ≈0.25dex), the corrections will not substan- |
|
tiallyeffectthesystematicerrorbars. Second,wedonotkn ow |
|
ofanystudieswhichwouldallowustoconstructpriorsonthe |
|
higher-order corrections. Finally, with higher-order mod els, |
|
there is the serious danger of over-fitting—that is, with ver y |
|
loose priors on systematic errors, the best-fit parameters f or |
|
the systematic errors will be influenced by bumps and wig- |
|
gles in the stellar mass function due to statistical and samp le |
|
variance errors. Hence, the interpretive value of the syste m- |
|
aticerrorsbecomesincreasinglydubiouswitheachadditio nal |
|
parameter. |
|
3.1.2.Modeling Statistical ErrorsinIndividual Stellar Mass |
|
Measurements |
|
In addition to the systematic effectsdiscussed in the previ - |
|
oussection,measurementofstellarmassesissubjecttosta tis- |
|
ticalerrors. Evenforafixedsetofassumptionsaboutthedus t |
|
model, SPS model, and the parameterization of star forma- |
|
tion histories, stellar masses will carry uncertainties be cause |
|
the mapping between observables and stellar masses is not |
|
one-to-one. This additional source of uncertainty has uniq ue |
|
effects on the GSMF. Observers will see an GSMF ( φmeas) |
|
which is the true or “intrinsic” GSMF ( φtrue) convolved with |
|
theprobabilitydistributionfunctionofthemeasurements cat- |
|
ter. Forinstance,ifthescatterisuniformacrossstellarm asses |
|
and has the shape of a certain probability distribution P, we |
|
have: |
|
φmeas(M)=/integraldisplay∞ |
|
−∞φtrue(10y)P/parenleftbig |
|
y−log10(M)/parenrightbig |
|
dy,(2) |
|
whereyis the integrationvariable,in units of log10mass. As |
|
derived in Appendix B, the approximate effect of the convo- |
|
lutionis |
|
log10/parenleftbiggφmeas(M) |
|
φtrue(M)/parenrightbigg |
|
≈σ2 |
|
2ln(10)/parenleftbiggdlogφtrue(M) |
|
dlogM/parenrightbigg2 |
|
,(3) |
|
whereσis the standard deviation of P. That is to say, the |
|
effectof the convolutiondependsstronglyon the logarithm ic |
|
slope ofφtrue. Where the slope is small (i.e., for low-mass |
|
galaxies), there is almost no effect. Above 1011M⊙, where |
|
the GSMF becomes exponential, there can be a dramatic ef- |
|
fect, with the result that φtrueis more than an order of mag- |
|
nitudelessthan φmeasbecauseit becomesfar morelikelythat |
|
stellar mass calculation errors produce a galaxy of very hig h |
|
perceived stellar mass than it is for there to be such a galaxy |
|
inreality(seeforexampleCattaneoet al. 2008). |
|
For the observed z∼0 GSMF, we take the probabil- |
|
ity distribution Pto be log-normal with 1 σwidth 0.07dex |
|
fromtheanalysisofthephotometryoflow–redshiftluminou s |
|
red galaxies (LRGs) (Conroyet al. 2009). Kauffmannet al. |
|
(2003) found similar results regarding the width of P. This |
|
function only accounts for the statistical uncertainties m en- |
|
tioned above and does not include additional systematic un- |
|
certainties. In light of Equation 3, we use LRGs to esti- |
|
matePbecause LRGs occupy the high stellar mass regime |
|
where measurementerrors are most likely to affect the shape |
|
of the observed GSMF. However, the single most important |
|
attribute of the distribution Pis its width; the main results do |
|
not change substantially if an alternate distribution with non- |
|
Gaussiantailsbeyondthe1 σlimitsofPisused. |
|
For higher redshifts, we scale the width of the probabil- |
|
ity distributionto accountfor the fact that mass estimates be- |
|
come less certain at higher redshift (e.g., Conroyet al. 200 9;UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 7 |
|
Kajisawaet al. 2009): |
|
P(∆log10M∗,z)=σ0 |
|
σ(z)P0/parenleftbiggσ0 |
|
σ(z)∆log10M∗/parenrightbigg |
|
,(4) |
|
whereP0is the probability distribution at z=0 (as discussed |
|
above),σ0is the standard deviation of P0, andσ(z) gives the |
|
evolutionofthe standarddeviationasa functionofredshif t. |
|
Conroyet al. (2009) did not give a functional form for |
|
σ(z), but they calculate fora handfulof massive galaxiesthat |
|
σ(z= 2) is≈0.18dex, as compared to σ(z= 0)≈0.07dex. |
|
Kajisawaet al. (2009) performeda similar calculation (alb eit |
|
with a differentSPS model)ofthe distributioninseveralre d- |
|
shift bins; their resultsshow gradualevolutionfor σ(z) out to |
|
z=3.5 for high stellar mass galaxies consistent with a linear |
|
fit: |
|
σ(z)=σ0+σzz. (5) |
|
The results of Kajisawaet al. (2009) suggest that σz=0.03- |
|
0.06dexforLRGs. Asthisisconsistentwiththevalueof σz= |
|
0.05dexwhichwouldcorrespondtoConroyet al.(2009),we |
|
adopt the linear scaling of Equation 5 with a Gaussian prior |
|
ofσz=0.05±0.015dex. |
|
Note that the effect of this statistical error on the stellar |
|
mass functionis minimalbelow 1011M⊙, andthereforedoes |
|
notaffectthestellarmass–halomassrelationforhalosbel ow |
|
∼1013M⊙,asdiscussedin §4.2. Whilethisscatterdoeshave |
|
an effect on the shape of the stellar mass function for high- |
|
mass galaxies, the qualitative predictions we make from thi s |
|
analysisaregenericto alltypesofrandomscatter. |
|
3.2.HaloMassFunctions |
|
The halo mass function specifies the abundance of halos |
|
as a function of mass and redshift. A number of analytic |
|
modelsandsimulation–basedfittingfunctionshavebeenpre - |
|
sented for computing mass functions given an input cos- |
|
mology (e.g., Press& Schechter 1974; Jenkinset al. 2001; |
|
Warrenet al. 2006; Tinkeret al. 2008). For most of our re- |
|
sultswewilladopttheuniversalmassfunctionofTinkereta l. |
|
(2008), as described below. Analytic mass functions are |
|
preferableasthey1)allowmassfunctionstobecomputedfor |
|
arangeofcosmologiesand2)donotsuffersignificantlyfrom |
|
sample variance uncertainties, because the analytic relat ions |
|
are typically calibrated with very large or multiple N−body |
|
simulations. |
|
For some purposes it will be useful to also consider full |
|
halo merger trees derived directly from N−body simulations |
|
that have sufficient resolution to follow halo substructure s. |
|
The simulations used herein will be described below, in ad- |
|
ditiontoourmethodsformodelinguncertaintiesintheunde r- |
|
lyingmassfunction,includingcosmologyuncertainties,s am- |
|
plevarianceinthegalaxysurveys,andourmodelsforsatell ite |
|
treatment. |
|
3.2.1.Simulations |
|
For the principal simulation in this study (“L80G”), we |
|
used a pure dark matter N-body simulation based on Adap- |
|
tive Refinement Tree (ART) code (Kravtsovet al. 1997; |
|
Kravtsov&Klypin 1999). The simulation assumed flat, con- |
|
cordance ΛCDM (ΩM=0.3,ΩΛ=0.7,h=0.7, andσ8=0.9) |
|
and included 5123particles in a cubic box with periodic |
|
boundary conditions and comoving side length 80 h−1Mpc. |
|
These parameters correspondto a particle mass resolution o f≈3.2×108h−1M⊙. For this simulation, the ART code be- |
|
gins with a spatial grid size of 5123; it refines the grid up to |
|
eight times in locally dense regions, leading to an adaptive |
|
distance resolution of ≈1.2h−1kpc (comoving units) in the |
|
densest parts and ≈0.31h−1Mpc in the sparsest parts of the |
|
simulation. |
|
In this simulation, halos and subhalos were identified |
|
using a variant of the Bound Density Maxima algorithm |
|
(Klypinetal. 1999). Halo centers are located at peaks in the |
|
density field smoothed over a 24-particle SPH kernel (for a |
|
minimumresolvable halomass of 7 .7×109h−1M⊙). Nearby |
|
particles are classified as bound or unbound in an iterative |
|
process;onceall thelocallyboundparticleshavebeenfoun d, |
|
halo parameters such as the virial mass Mvirand maximum |
|
circularvelocity Vmaxmaybe calculated. (See Kravtsovet al. |
|
2004 for complete details on the algorithm). The simulation |
|
is complete down to Vmax≈100 km s−1, corresponding to a |
|
galaxystellar massof108.75M⊙atz=0. |
|
The ability of L80G to track satellites with high mass and |
|
forceresolutiongivesitseveraluses. MergertreesfromL8 0G |
|
informourprescriptionforconvertinganalytical central -only |
|
halo mass functions to mass functions which include satel- |
|
lite halos (see §3.2.2). Additionally, the merger trees all ow |
|
forevaluationofdifferentmodelsofsatellitestellar evo lution |
|
with full consistency (see §3.3.2). Finally, the knowledge of |
|
which satellite halos are associated with which central hal os |
|
allowsforestimatesofthetotalstellarmass(inthecentra land |
|
allsatellite galaxies)— halomassrelation(see §4.3.6). |
|
We also make use of a secondary simulation from the |
|
Large Suite of Dark Matter Simulations (LasDamas Project, |
|
http://lss.phy.vanderbilt.edu/lasdamas/) in our sample vari- |
|
ancecalculations. TheL80Gsimulationistoosmallforusei n |
|
calculatingthesamplevariancebetweenmultipleindepend ent |
|
mocksurveys,butthelargersizeoftheLasDamassimulation |
|
(420h−1Mpc,14003particles)makesitidealforthispurpose. |
|
However, the LasDamas simulation has poorer mass resolu- |
|
tion (a minimum particle size of 1 .9×109M⊙) and force |
|
resolution (8 h−1kpc), making it unable to resolve subhalos |
|
(particularlyafteraccretion)aswell asL80G.TheLasDama s |
|
simulation assumes a flat, ΛCDM cosmology ( ΩM= 0.25, |
|
ΩΛ= 0.75,h= 0.7, andσ8= 0.8) which is very close to the |
|
WMAP5best-fitcosmology(Komatsuetal.2009). Collision- |
|
less gravitational evolution was provided by the GADGET-2 |
|
code (Springel 2005). Halos are identified using friends of |
|
friendswith a linkinglengthof 0.164. The subfind algorithm |
|
Springel(2005) isusedtoidentifysubstructure. |
|
Asmentioned,theprimaryuseoftheLasDamassimulation |
|
is in sampling the halo mass functions in mock surveys to |
|
model the effects of sample variance on high-redshiftpenci l- |
|
beam galaxy surveys. The mock surveys are constructed so |
|
as to mimic the observationsin Pérez-Gonzálezet al. (2008) . |
|
Ineachmocksurvey,threepencil-beamlightcones(matchin g |
|
the angular sizes of the three fields in Pérez-Gonzálezet al. |
|
2008) with random orientations are sampled from a random |
|
originin the simulationvolumeoutto z=1.3. Thus,bycom- |
|
paring the halo mass functionsin individualmock surveysto |
|
themassfunctionoftheensemble,theeffectsofsamplevari - |
|
ancemaybecalculatedwithfullconsiderationofthe correl a- |
|
tionsbetweenhalocountsat differentmasses. |
|
3.2.2.AnalyticMass Functions |
|
TheanalyticmassfunctionsofTinkeret al.(2008)areused |
|
to calculate the abundance of halos in several cosmological8 BEHROOZI,CONROY& WECHSLER |
|
0.2 0.3 0.4 0.50.6 0.7 0.8 0.9 1 |
|
Scale Factor-1-0.9-0.8-0.7-0.6Δlog10φ0 L80G |
|
Fit |
|
0.2 0.3 0.4 0.50.6 0.7 0.8 0.9 1 |
|
Scale Factor-0.16-0.12-0.08-0.0400.04Δlog10M0 L80G |
|
Fit |
|
0.2 0.3 0.4 0.50.6 0.7 0.8 0.9 1 |
|
Scale Factor-0.16-0.0800.080.16Δlog10α |
|
L80G |
|
Fit |
|
Figure1. Differences between the fitted Schechter function paramete rs for the satellite halo mass (at accretion) function and th e central halo mass function, as |
|
a function of scale factor; e.g., ∆log10φ0corresponds to log10(φ0,sats/φ0,centrals). The black lines are calculated from a simulation using WMA P1 cosmology |
|
(L80G),and the red lines represent the fits to the simulation results in Equation 7. |
|
models. We calculate mass functions defined by Mvir, using |
|
the overdensity specified by Bryan&Norman (1998)3This |
|
results in an overdensity (compared to the mean background |
|
density)∆virwhichrangesfrom337at z=0to203at z=1and |
|
smoothly approaches 180 at very high redshifts. Following |
|
Tinkeret al. (2008), we use spline interpolation to calcula te |
|
mass functions for overdensities between the discrete inte r- |
|
valspresentedintheirpaper. |
|
ThemassfunctionsinTinkeret al.(2008)onlyincludecen- |
|
tral halos. We model the small ( ≈20% atz=0) correctionto |
|
the mass function introduced by subhalos to first order only, |
|
as the overall uncertaintyin the central halo mass function is |
|
alreadyoforder5%(Tinkeret al.2008). Inparticular,weca l- |
|
culate satellite (massat accretion)and centralmass funct ions |
|
in our simulation (L80G) and fit Schechter functionsto both, |
|
excluding halos below our completeness limit (1010.3M⊙). |
|
Then, we plot the difference between the Schechter param- |
|
eters (the difference in characteristic mass, ∆log10M∗; the |
|
difference in characteristic density, ∆log10φ0; and the dif- |
|
ference in faint-end slopes, ∆α) as a function of scale factor |
|
(a). This gives the satellite mass function ( φs) as a function |
|
of the central mass function ( φc), which allows us to use this |
|
(first-order)correction for central mass functionsof diff erent |
|
cosmologies: |
|
φs(M)=10∆log10φ0/parenleftbiggM |
|
M0·10∆log10M0/parenrightbigg−∆α |
|
φc(M/10∆log10M0). |
|
(6) |
|
Fromoursimulation,we findfitsasshownin Figure1:4 |
|
∆log10φ0(a)=−0.736−0.213a, |
|
∆log10M0(a)=0.134−0.306a, (7) |
|
∆α(a)=−0.306+1.08a−0.570a2. |
|
Themassfunctionused heremaybe beeasily replacedby an |
|
arbitrarymassfunction,asdetailedinAppendixA. |
|
3.2.3.Modeling Uncertainties inCosmological Parameters |
|
Our fiducial results are calculated assuming WMAP5 cos- |
|
mologicalparameters. In orderto modeluncertaintiesin co s- |
|
mological parameters, we have sampled an additional 100 |
|
setsofcosmologicalparametersfromtheWMAP5+BAO+SN |
|
3∆vir=(18π2+82x−39x2)/(1+x);x=(1+ρΛ(z)/ρM(z))−1−1 |
|
4Comparing these fits to satellite mass functions from a more r ecent sim- |
|
ulation (Klypin etal. 2010, the “Bolshoi” simulation), we h ave verified that |
|
applying these fits to mass functions for the WMAP5 cosmology introduces |
|
errorsonly onthelevel of5%inoverall number density, simi lar totheuncer- |
|
tainty with which the mass function isknown.MCMC chains (from the models in Komatsuet al. 2009) |
|
and generated mass functions for each one according to the |
|
methodinthe previoussection. Hence,todeterminethevari - |
|
anceinthederivedstellarmass–halomassrelationcausedb y |
|
cosmology uncertainties, we recalculate the relation for e ach |
|
sampled mass function according to the method described in |
|
AppendixA. |
|
3.2.4.EstimatingSample Variance Effectsforthe Stellar Mass |
|
Function |
|
Large–scalemodesinthematterpowerspectrumimplythat |
|
finitesurveyswillobtainabiasedestimateofthenumberden - |
|
sities of galaxies and halos as compared to the full universe . |
|
That is to say, matching observed GSMFs measured from a |
|
finitesurveytothehalomassfunctionestimatedfromamuch |
|
largervolumewill introducesystematic errorsintothe res ult- |
|
ingSM–HMrelation. Theseerrorscannotbecorrectedunless |
|
one has knowledge of the halo mass function for the specific |
|
surveyin question,whichisin generalnotpossible. |
|
However,wecanstillcalculatetheuncertaintiesintroduc ed |
|
by the limited sample size. While we cannot determine the |
|
true halo mass function for the survey, we can calculate the |
|
probabilitydistribution of halo mass functionsfor identi cally |
|
shaped surveys via sampling lightcones from simulations. I f |
|
we rematch galaxy abundances from the observed GSMF to |
|
the abundances of halos in each of the sampled lightcones, |
|
thenthe uncertaintyintroducedbysample varianceis exact ly |
|
capturedin thevarianceoftheresultingSM–HMrelations. |
|
In detail, we create our distribution of halo mass func- |
|
tions by sampling one thousand mock surveys from the Las- |
|
Damassimulation(see§3.2.1)correspondingtotheexactsu r- |
|
vey parameters used in Pérez-Gonzálezet al. (2008). We fit |
|
Schechter functions to the halo mass functionsof each mock |
|
survey (over all redshifts), and we calculate the change in |
|
Schechter parameters ( ∆log10φ0,∆log10M0, and∆α) as |
|
compared to a Schechter fit to the ensemble average of the |
|
mass functions. Using the distribution of the changes in |
|
Schechter parameters, we may mimic to first order the ex- |
|
pecteddistributionofhalomassfunctionsforanycosmolog y. |
|
In particular, we use an equation exactly analogous to Equa- |
|
tion6to convertthe massfunctionforthe fulluniverse( φfull) |
|
and the distribution of ∆log10φ0,∆log10M0, and∆αinto a |
|
distributionofpossiblesurveymassfunctions( φobs): |
|
φobs(M)=10∆log10φ0/parenleftbiggM |
|
M0·10∆log10M0/parenrightbigg−∆α |
|
φfull(M/10∆log10M0). |
|
(8) |
|
Hence,toobtainthevarianceinthestellarmass–halomassUncertaintiesAffectingtheStellar Mass–HaloMassRelati on 9 |
|
relation caused by finite survey size, we recalculate the rel a- |
|
tionforeachoneofthesurveymassfunctionsthuscomputed |
|
accordingtothemethoddescribedin AppendixA. |
|
3.3.Uncertaintiesin AbundanceMatching |
|
3.3.1.Scatter inStellar Mass at FixedHalo Mass |
|
An important uncertainty in the abundance matching pro- |
|
cedure is introduced by intrinsic scatter in stellar mass at a |
|
given halo mass. Suppose that M∗(Mh) is the average (true) |
|
galaxy stellar mass as a function of host halo mass. For a |
|
perfect monotonic correlation between stellar mass and hal o |
|
mass, i.e., without scatter between stellar and halo mass, i t |
|
is straightforwardto relate the true or “intrinsic” stella r mass |
|
function( φtrue)to thehalomassfunction( φh) via |
|
dN |
|
dlog10M∗=dN |
|
dlog10MhdlogMh |
|
dlogM∗, (9) |
|
whereNisthenumberdensityofgalaxies,sothat |
|
φtrue(M∗(Mh))=φh(Mh)/parenleftbiggdlogM∗(Mh) |
|
dlogMh/parenrightbigg−1 |
|
.(10) |
|
Intuitively,asthehalosofmass Mhgetassignedstellarmasses |
|
ofM∗(Mh),thenumberdensityofgalaxieswithmass M∗(Mh) |
|
willbeproportionaltothenumberdensityofhaloswithmass |
|
Mh. Theaboveequationsaresimplyamathematicalrepresen- |
|
tationofthetraditionalabundancematchingtechnique. |
|
Equation10remainsusefulinthepresenceofscatter. Ifwe |
|
knowthe expectedscatter aboutthe meanstellar mass, sayin |
|
the formof a probabilitydensity function Ps(∆log10M∗|Mh), |
|
then we may still relate φtruetoφhvia an integral similar to a |
|
convolution: |
|
φtrue(x)=/integraltext∞ |
|
0φh(Mh(M∗))dlogMh(M∗) |
|
dlogM∗× |
|
×Ps(log10x |
|
M∗|Mh(M∗))dlog10M∗,(11) |
|
whereMh(M∗)istheinversefunctionof M∗(Mh). |
|
This similarity to a convolution is no coincidence— |
|
mathematically,it isanalogoustohowwemodelrandomsta- |
|
tisticalerrorsinstellarmassmeasurementsin§3.1.2. Nam ely, |
|
ifwedefine φdirecttoequaltheright-handsideofEquation10, |
|
φdirect(M∗)≡φh(Mh(M∗))dlogMh |
|
dlogM∗, (12) |
|
and if we assume a probability density distribution indepen - |
|
dent of halo mass (i.e., scatter in stellar mass at fixed halo |
|
mass is independent of halo mass), then φtrueis exactly re- |
|
latedtoφdirectbyaconvolution: |
|
φtrue(M∗)=/integraldisplay∞ |
|
−∞φdirect(10y)Ps(y−log10M∗)dy,(13) |
|
whichis mathematicallyidenticaltoEquation2in§3.1.2. |
|
Then, if one calculates φdirectfromφtrue, one may find |
|
Mh(M∗) via direct abundance matching. Namely, integrating |
|
equation12,we have: |
|
/integraldisplay∞ |
|
Mh(M∗)φh(M)dlog10M=/integraldisplay∞ |
|
M∗φdirect(M∗)dlog10M∗.(14) |
|
Equivalently, letting Φh(Mh)≡/integraltext∞ |
|
Mhφh(M)dlog10Mbe the |
|
cumulative halo mass function, and letting Φdirect(M∗)≡/integraltext∞ |
|
M∗φdirect(M∗)dlog10M∗be the cumulative “direct” stellar |
|
massfunction,wehave |
|
Mh(M∗)=Φ−1 |
|
h(Φdirect(M∗)), (15) |
|
andonemaysimilarlyfind M∗(Mh)byinvertingthisrelation. |
|
Our approach in all equations except for Equation 13 al- |
|
lows a halo mass-dependentscatter in the stellar mass, but t o |
|
date the data appears to be consistent with a constant scatte r |
|
value. For example, using the kinematics of satellite galax - |
|
ies, Moreet al. (2009) finds that the scatter in galaxy lumi- |
|
nosity at a given halo mass is 0 .16±0.04 dex, independent |
|
of halo mass. Using a catalog of galaxy groups, Yanget al. |
|
(2009b) find a value of 0 .17 dex for the scatter in the stel- |
|
lar massat a givenhalomass, also independentof halomass. |
|
Here, we thus assume a fixed value for the scatter in stellar |
|
mass at fixed halo mass, ξ, to specify the standard deviation |
|
ofPs(∆log10M∗). As the Yangetal. (2009b) value is consis- |
|
tent with the Moreet al. (2009) value, we set the prior using |
|
the Moreetal. (2009) value and error bounds on ξ, We as- |
|
sume a Gaussian prior on the probability distribution for ξ, |
|
andwe assumethatthescatter itself islog-normal. |
|
3.3.2.The Treatment of Satellites |
|
Whenagalaxyisaccretedintoalargersystem,itwilllikely |
|
bestrippedofdarkmattermuchmorerapidlythanstellarmas s |
|
because the stars are much more tightly bound than the halo. |
|
It has been demonstratedthat variousgalaxyclusteringpro p- |
|
erties compare favorably to samples of halos where satellit e |
|
halos— i.e., subhalos— are selected accordingto their halo |
|
mass at the epoch of accretion, Macc, rather than their cur- |
|
rent mass (e.g., Nagai&Kravtsov 2005; Conroyet al. 2006; |
|
Vale&Ostriker 2006; Berrieretal. 2006). Theseresultssup - |
|
port the idea that satellite systems lose dark matter more |
|
rapidlythanstellar mass. |
|
As commonly implemented (e.g. Conroyetal. 2006), the |
|
abundancematchingtechniquematchesthestellarmassfunc - |
|
tionataparticularepochtothehalomassfunctionatthesam e |
|
epoch, using Maccrather than the present mass for subhalos. |
|
AsMaccremainsfixedaslongasthesatelliteisresolvable,the |
|
standard technique implies that the satellite galaxy’s ste llar |
|
mass will continue to evolve in the same way as for centrals |
|
ofthat halomass. Therefore,a subtle implicationof thesta n- |
|
dardtechniqueisthatsatellitesmaycontinuetogrowinste llar |
|
mass, even though Maccremainsthe same. A differentmodel |
|
forsatellitestellarevolution(e.g.,inwhichstellarmas swhich |
|
does not evolve after accretion) would therefore involve di f- |
|
ferentchoicesinthesatellite matchingprocess. |
|
The fiducial results presented here use the standard model |
|
where satellites are assigned stellar masses based on the cu r- |
|
rent stellar mass function and their accretion–epoch masse s. |
|
However, we also present results for comparison in which |
|
satellite masses are assigned utilizing the stellar mass fu nc- |
|
tion at the epoch of accretion, correspondingto a situation in |
|
which satellite stellar masses do not change after the epoch |
|
ofaccretion. In orderto maintainself-consistencyforthe lat- |
|
ter method, we use full merger trees (from L80G, the simu- |
|
lation described in §3.2.1) to keep track of satellites and t o |
|
assure that, e.g.,mergersbetween satellites beforethey r each |
|
thecentralhalopreservestellar mass. |
|
Finally, we note that any specific halo–finding algorithm |
|
may introduce artifacts in the halo mass function in terms |
|
of when a satellite halo is considered absorbed/destroyed. |
|
This can have a small effect on satellite clustering as well a s10 BEHROOZI,CONROY & WECHSLER |
|
number density counts. Wetzel & White (2009) suggest an |
|
approach that avoids some of the problems associated with |
|
resolving satellites after accretion. Namely, they sugges t a |
|
model where satellites remain in orbit for a duration that is a |
|
function of the satellite mass, the host mass, and the Hubble |
|
time, after which time they dissolve or merge with the cen- |
|
tralobject. Althoughwehavenotmodeledthisexplicitly,o ur |
|
satellite counts are consistent with their recommendedcut off |
|
—theysuggestconsideringasatellitehaloabsorbedwhenit s |
|
presentmassislessthan0.03timesitsinfallmass;inoursi m- |
|
ulation,only0.1%ofall satellitesfall belowthisthresho ld. |
|
3.4.FunctionalFormsfortheStellarMass–HaloMass |
|
Relation |
|
Inordertodeterminetheprobabilitydistributionofourun - |
|
derlying model parameters, we must first define an allowed |
|
parameterspaceforthestellarmass–halomassrelation. Id e- |
|
ally, one would like a simple, accurate, physically intuiti ve, |
|
andorthogonalparameterization;inpractice,weseektheb est |
|
compromise with these four goals in mind. We consider one |
|
of the most popular methods for choosing a functional form |
|
(indirect parameterization via the stellar mass function) be- |
|
fore discussing the method we use in this paper (parameteri- |
|
zationvia deconvolutionofthe stellarmassfunction). |
|
3.4.1.Parameterizing the Stellar Mass Function |
|
In abundance matching, knowledge of the halo mass func- |
|
tion and the stellar mass function uniquely determines the |
|
stellar mass – halo mass relation. Hence, parameterizing |
|
the stellar mass function yields an indirect parameterizat ion |
|
for the stellar mass – halo mass relation as well. Numer- |
|
ouspapers(e.g.Cole et al.2001;Bell etal.2003;Pantereta l. |
|
2004; Pérez-Gonzálezet al.2008) havefoundthat theGSMF |
|
iswell-approximatedbyaSchechterfunction: |
|
φ(M∗,z)=φ⋆(z)/parenleftbiggM∗ |
|
M(z)/parenrightbigg−α(z) |
|
exp/parenleftbigg |
|
−M∗ |
|
M(z)/parenrightbigg |
|
,(16) |
|
where the Schechter parameters φ⋆(z),M(z), andα(z) evolve |
|
as functions of the redshift z. In many previous works |
|
on abundance matching (e.g. Conroyetal. 2009), it is the |
|
Schechter function for the stellar mass function that sets t he |
|
formoftheSM–HMrelation. |
|
More recently, however, several authors have noted that |
|
the GSMF cannot be matched by a single Schechter function |
|
forz<0.2 to within statistical errors (e.g. Li &White 2009; |
|
Baldryetal. 2008), in part because of an upturn in the slope |
|
of the GSMF for galaxies below 109M⊙in stellar mass. It |
|
is possible that a conspiracy of systematic errors causes th e |
|
observeddeviations,butthereisnofundamentalreasontoe x- |
|
pecttheintrinsicGSMF tobefitexactlybyaSchechterfunc- |
|
tion (see discussion in AppendixC). In any case, our full pa- |
|
rameterization —either the stellar mass function or the err or |
|
parameterization— mustbe able to capture all the subtleties |
|
of the observedstellar massfunction. Hence, we are incline d |
|
toadopta moreflexiblemodelthanthe Schechterfunctionof |
|
equation16. Otherauthors,wrestlingwiththesameproblem , |
|
have chosen to adopt multiple Schechter functions, includ- |
|
ing the eleven-parameter triple piecewise Schechter-func tion |
|
fit used by Li& White (2009). While accurate, these models |
|
oftenaddcomplicationwithoutincreasingintuition. |
|
3.4.2.Deconvolving the Observed Stellar Mass Function11 12 13 14 15 |
|
log10(Mh) [MO•]8.89.29.61010.410.811.211.6log10(M*) [MO•] |
|
Direct Deconvolution |
|
Functional Fit |
|
Figure2. Relation between halo massandstellar massinthelocalUniv erse, |
|
obtained via direct deconvolution of the stellar mass funct ion in Li&White |
|
(2009) matched to halos in a WMAP5 cosmology. The deconvolut ion in- |
|
cludes the most likely value of scatter in stellar mass at a gi ven halo mass as |
|
wellasstatisticalerrorsinindividualstellarmasses. Th edirectdeconvolution |
|
(solid line) is compared to thebest fitto Eq. 21 ( red dashed line ). |
|
Rather than attempting to parameterize the stellar mass |
|
function, we could use abundance matching directly to de- |
|
rive the stellar mass – halo mass relation for the maximal- |
|
likelihoodstellar mass function,and thenfind a fit which can |
|
parameterize the uncertainties in the shape of the relation . |
|
This process is complicated by the various errors which we |
|
musttakeintoaccount. Recall fromEquations2and13that |
|
φmeas(M∗)=φdirect(M∗)◦Ps(∆log10M∗)◦P(∆log10M∗), |
|
(17) |
|
(where “◦” denotes the convolutionoperation, Psis the prob- |
|
ability distribution for the scatter in stellar mass at fixed halo |
|
mass, and Pis the probability distribution for errors in ob- |
|
served stellar mass at fixed true stellar mass). However, |
|
if we obtain φdirectby deconvolution of the observed stellar |
|
mass function φmeas, we may use direct abundance matching |
|
(Equation 15) to determine the maximum likelihood form of |
|
Mh(M∗). |
|
Figure 2 shows the result of calculating Mh(M∗) atz∼0.1 |
|
via deconvolution and direct matching of the stellar mass |
|
function as described in the previous section. We choose |
|
themaximum-likelihoodvalueforthedistributionfunctio nPs |
|
(namely, 0.16 dex log-normal scatter), and we use WMAP5 |
|
cosmologyforthehalomassfunction φhinthederivation. |
|
While deconvolutionplusdirectabundancematchinggives |
|
anunbiasedcalculationoftherelation,thereareseveralp rob- |
|
lems which prevent it from being used directly to calculate |
|
uncertainties: |
|
1. Deconvolutionwilltendtoamplifystatisticalvariatio ns |
|
in the stellar mass function—that is, shallow bumps |
|
in the GSMF will be interpreted as convolutions of a |
|
sharperfeature. |
|
2. Deconvolutionwill give different results depending on |
|
the boundary conditions imposed on the stellar mass |
|
function (i.e., how the GSMF is extrapolated beyond |
|
the reporteddata points)—the effects of which may be |
|
seenat theedgesofthedeconvolutioninFigure2. |
|
3. Deconvolution becomes substantially more problem-UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 11 |
|
atic when the convolutionfunctionvaries over the red- |
|
shift range, as it does for our higher-redshift data ( z> |
|
0.2). |
|
4. Deconvolution cannot extract the relation at a single |
|
redshift—instead, it will only return the relation aver- |
|
aged over the redshift range of galaxiesin the reported |
|
GSMF. |
|
For these reasons, we choose to find a fitting formula in- |
|
stead. In the discussion that follows, we fit Mh(M∗) (the halo |
|
massforwhichtheaveragestellarmassis M∗)ratherthanthe |
|
moreintuitive M∗(Mh)(theaveragestellarmassatahalomass |
|
Mh) primarily for reasons of computational efficiency. From |
|
Equations12and17,thecalculationofwhatobserverswould |
|
see(φmeas)foratrialstellarmass–halomassrelationrequires |
|
many evaluations of Mh(M∗) and no evaluations of M∗(Mh). |
|
Ifwehadinsteadparameterized M∗(Mh),andtheninvertedas |
|
necessary in the calculation of φmeas, our calculations would |
|
havetakenanorderofmagnitudemorecomputertime. |
|
3.4.3.Fittingthe Deconvolved Relation |
|
It is well-known from comparing the GSMF (or the lu- |
|
minosity function) to the halo mass function that high-mass |
|
(M∗/greaterorsimilar1010.5M⊙) galaxieshave a significantly differentstel- |
|
lar mass-halo mass scaling than low-mass galaxies, which |
|
is usually attributed to different feedback mechanisms dom - |
|
inating in high-mass vs. low-mass galaxies. The transition |
|
point between low-mass and high-mass galaxies—seen as a |
|
turnoverintheplotof Mh(M∗)aroundM∗=1010.6M⊙inFig- |
|
ure 2—defines a characteristic stellar mass ( M∗,0) and an as- |
|
sociated characteristic halo mass ( M1). Hence, we consider |
|
functionalformswhichrespectthisgeneralstructureofa l ow |
|
stellarmassregimeandahighstellarmassregimewithachar - |
|
acteristictransitionpoint: |
|
log10(Mh(M∗))= log10(M1) [CharacteristicHaloMass] |
|
+flow(M∗/M∗,0) [Low-massfunctionalform] |
|
+fhigh(M∗/M∗,0) [High-massfunctionalform] |
|
whereflowandfhighare dimensionless functions dominating |
|
belowandabove M∗,0, respectively. |
|
Forlow-massgalaxies( M∗<1010.5M⊙),wefindthestellar |
|
mass–halomassrelationtobeconsistentwithapower–law: |
|
Mh(M∗) |
|
M1≈/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ |
|
,or |
|
log(Mh(M∗))≈log(M1)+βlog/parenleftbiggM∗ |
|
M∗,0/parenrightbigg |
|
.(18) |
|
Forhigh-massgalaxies,we findthestellar mass–halomass |
|
relation to be inconsistent with a power–law. In particu- |
|
lar, the logarithmic slope of Mh(M∗) changes with M∗, with |
|
dlogMh/dlogM∗always increasing as M∗increases. This |
|
may seem like a small detail; after all, by eye, it appears tha t |
|
a power law could be a reasonable fit for high-mass galax- |
|
ies in Figure 2. In addition, because previous authors (e.g. , |
|
Mosteretal. 2009; Yanget al. 2009a) have used power laws, |
|
it maynotseem necessarytouse a differentfunctionalform. |
|
In order to explore this issue, we tried a general dou- |
|
ble power–law functional form for Mh(M∗) which parame- |
|
terized a superset of the fits used in Mosteretal. (2009) and |
|
Yanget al. (2009a) (in particular, the same form as in Equa- |
|
tionC2inAppendixC). Wefoundthatthisapproachhadtwo |
|
majorproblemscommonto anysuchpower–lawform:1. As the logarithmic slope of Mh(M∗) increases with |
|
increasing M∗, the best-fit power–law for high-mass |
|
galaxies will depend on the upper limit of M∗in the |
|
available data for the GSMF. Thus, the best-fit power– |
|
law will depend on the number density limit of the |
|
observational survey used—rather than on any funda- |
|
mental physics. Moreover, for studies such as this one |
|
whichconsiderredshiftevolution,thedifferentnumber |
|
densities probed at different redshifts result in a com- |
|
pletelyartificial“evolution”ofthebest-fitpower–law. |
|
2. The best–fit power–law will not depend on the high- |
|
est mass galaxies alone; instead, it will be something |
|
of an average overall the high-massgalaxies. Because |
|
thelogarithmicslopeisincreasingwith M∗,thismeans |
|
thatthebest-fitpowerlawfor Mh(M∗)willincreasingly |
|
underestimate the true Mh(M∗) at high M∗. Namely, |
|
the fit will underestimate the halo mass correspond- |
|
ing to a given stellar mass, and therefore (as lower- |
|
masshaloshavehighernumberdensities)resultinstel- |
|
larmassfunctions systematically biasedaboveobserva- |
|
tional values. However, a systematic bias in our func- |
|
tional form will influencethe best-fit valuesof the sys- |
|
tematic error parameters. The systematic bias caused |
|
byassumingapower–lawformturnsouttobemostde- |
|
generate with the scatter in stellar mass at fixed halo |
|
mass (ξ). As a result, for the MCMC chains which as- |
|
sumed a double power–law form for Mh(M∗), the pos- |
|
terior distribution of ξwas 0.09±0.02 dex, which just |
|
barelylieswithin2 σoftheconstraintsfromMoreet al. |
|
(2009). |
|
These problemsare not as significant if one only considers |
|
thestellarmassfunctionatasingleredshift,orifonedoes not |
|
allowforthesystematicerrorswhichchangetheoverallsha pe |
|
ofthestellarmassfunction( κ,ξ,andσ(z)). However,wefind |
|
that the issues listed above exclude the use of a power–law |
|
for our purposes. Instead, we find that Mh(M∗) asymptotes |
|
toasub-exponential functionforhigh M∗, namely,afunction |
|
which climbsmore rapidly than any power–lawfunction,but |
|
lessrapidlythananyexponentialfunction. Wefindthathigh – |
|
massgalaxies( M∗>1010.5M⊙)arewell fit bytherelation |
|
Mh(M∗)∼∝10/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigδ |
|
,or |
|
log10(Mh(M∗))→log10(M1)+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ |
|
(19) |
|
whereδsets how rapidly the function climbs; δ→0 would |
|
correspond to a power–law, and δ= 1 would correspond to a |
|
pureexponential. Typicalvaluesof δatz=0rangefrom0 .5− |
|
0.6. It is not obvious what physical meaning can be directly |
|
inferredfromthechoiceofa sub-exponentialfunction—aft er |
|
all, the stellar mass of a galaxyis a complicatedintegralov er |
|
the merger and evolution history of the galaxy—but it could |
|
suggest that the physics drivingthe Mh(M∗) relation at high– |
|
massis notscale–free. |
|
Although this form now matches the asymptotic behavior |
|
for the highest and lowest stellar mass galaxies, one addi- |
|
tional parameteris necessary to match the functionalform o f |
|
the deconvolution. That is to say, galaxiesin between the ex - |
|
tremes in stellar mass will lie in a transition region, as the y |
|
may have been substantially affected by multiple feedback |
|
mechanisms. The width of this transition region will depend |
|
on many things—e.g., how long galaxies take to gain stellar12 BEHROOZI,CONROY & WECHSLER |
|
mass,howmuchofthestellar masspresentcamefromquies- |
|
cent star formation as opposed to mergers, and the degree of |
|
interaction between multiple feedback mechanisms. Hence, |
|
instead of having Mh(M∗) become suddenly sub-exponential |
|
forgalaxieslargerthan M∗,0,weallowforaslow“turn-on”of |
|
the morerapid growth. The behaviorof Mh(M∗) is best fit by |
|
modifyingthepreviousequationto |
|
log10(Mh(M∗))→log10(M1)+/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigδ |
|
1+/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBig−γ(20) |
|
The denominator,1 +(M∗/M∗,0)−γ, is largefor M∗<M∗,0, |
|
anditfallstounityfor M∗>M∗,0ataratecontrolledby γ. A |
|
larger value of γimplies a more rapid transition between the |
|
power–law and sub-exponential behavior (typical values fo r |
|
(γ)atz=0are1.3-1.7). Asthenon-constantpieceof Mh(M∗) |
|
inEquation20is1 |
|
2forM∗=M∗,0, weadda finalfactorof −1 |
|
2tocompensatesothat Mh(M∗,0)=M1. |
|
To summarize, our resulting best–fit functional form has |
|
fiveparameters: |
|
log10(Mh(M∗))= |
|
log10(M1)+βlog10/parenleftbiggM∗ |
|
M∗,0/parenrightbigg |
|
+/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigδ |
|
1+/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBig−γ−1 |
|
2.(21) |
|
WhereM1isacharacteristichalomass, M∗,0isacharacteristic |
|
stellar mass, βis the faint-end slope, and δandγcontrol the |
|
massive-end slope. The best fit using this functional form is |
|
shown in Figure 2, and it achieves excellent agreement over |
|
theentirerangeofstellar masses. |
|
Deconvolving the GSMF at higher redshifts does not sug- |
|
gest that anything more than linear evolution in the parame- |
|
tersisnecessary,at least outto z=1. While the characteristic |
|
mass of the GSMF and the characteristic mass of the halo |
|
mass function certainly evolve, the change in the shapesof |
|
thetwofunctionsisrelativelyslight. Aswewishforthefun c- |
|
tionalformtohaveanaturalextensiontohigherredshifts, we |
|
parameterizethe evolutionin termsofthescale factor( a): |
|
log10(M1(a))=M1,0+M1,a(a−1), |
|
log10(M∗,0(a))=M∗,0,0+M∗,0,a(a−1), |
|
β(a)=β0+βa(a−1), (22) |
|
δ(a)=δ0+δa(a−1), |
|
γ(a)=γ0+γa(a−1), |
|
wherea=1isthescale factortoday. |
|
3.5.CalculatingModelLikelihoods |
|
We make use of a Markov Chain Monte Carlo (MCMC) |
|
method to generate a probability distribution in our com- |
|
plete parameter space of stellar mass function parame- |
|
ters (M1,0,M1,a,M∗,0,0,M∗,0,a,β0,βa,δ0,δa,γ0,γa), systematic |
|
modeling errors ( κ,µ,σz), and the scatter in stellar mass at |
|
fixedhalomass( ξ). Abriefsummaryofeachoftheseparam- |
|
eters appears in Table 1 along with a reference to the section |
|
inwhichitwasfirstdescribed. Usingthisfullmodel,wemay |
|
calculate the stellar mass functions expected to be seen by |
|
observers ( φexpect) for a large number of points in parameter |
|
space, and compare them to observed GSMFs (Li&White2009; Pérez-Gonzálezet al. 2008). Note that, as the observa - |
|
tionaldataalwayscoversarangeofredshifts,wemustmimic |
|
thisin ourcalculationof φexpect: |
|
φexpect=/integraltextz2 |
|
z1φfit(z)dVC(z)/integraltextz2 |
|
z1dVC(z), (23) |
|
wheredVC(z) is the comoving volume element per unit solid |
|
angle as a functionof redshift. Then, we can write the likeli - |
|
hoodasL=exp/parenleftbig |
|
−χ2/2/parenrightbig |
|
, where |
|
χ2=/integraldisplay/bracketleftbigglog10[φexpect(M∗)/φmeas(M∗)] |
|
σobs(M∗)/bracketrightbigg2 |
|
dlog10(M∗),(24) |
|
andwhere σobs(M∗)isthereportedstatistical errorin φmeasas |
|
afunctionofstellarmass. |
|
Note that, as defined above, the equation for χ2contains |
|
the assumption that there is only one independent observa- |
|
tion point for the GSMF per decade in stellar mass (from the |
|
weightof dlog10(M)). Wemaytunethisassumptionintroduc- |
|
inganotherparameter n—thenumberofnon-correlatedobser- |
|
vations per decade in stellar mass—which would change the |
|
likelihood function to L= exp/parenleftbig |
|
−nχ2/2/parenrightbig |
|
. Here, we assume |
|
that each of the data points reported by Li &White (2009) |
|
and Pérez-Gonzálezet al. (2008) are independent—suchthat |
|
n=10fortheformerpaperand n=5forthelatterpaper. |
|
The MCMC chains each contain 222≈4×106points. |
|
We verify convergence according to the algorithm in |
|
Dunkleyet al. (2005); in all cases, the ratio of the sample |
|
mean variance to the distribution variance (the “convergen ce |
|
ratio”)isbelow0.005. |
|
3.6.MethodologySummary |
|
Our procedureto calculate the stellar mass – halo mass re- |
|
lation, taking into account all mentioned uncertainties, m ay |
|
besummarizedin sevensteps: |
|
1. We select a trial point in the parameter space of SM– |
|
HM relations as well as a trial point in our parameter |
|
space of systematics ( µ,κ,σz,ξ). A complete list of |
|
parametersanddescriptionsisgiveninTable1. |
|
2. The trial SM–HM relation gives a one-to-onemapping |
|
between halo masses and stellar masses, giving a di- |
|
rect conversion from the halo mass function to a trial |
|
galaxystellarmassfunction(correspondingto φdirectin |
|
§3.3.1). |
|
3. This trial GSMF is convolvedwith the probability dis- |
|
tributions for scatter in stellar mass at fixed halo mass |
|
(controlledby ξ,see§3.3.1)andforscatterinobserver- |
|
determined stellar mass at fixed true stellar mass (par- |
|
tially controlledby σz,see §3.1.2). |
|
4. The resulting GSMF is shifted by a uniform offset in |
|
stellar masses (controlled by µ) to account for uni- |
|
formsystematicdifferencesbetweenouradoptedstellar |
|
masses and the true underlyingmasses. Also, its shape |
|
is stretched or compressed to account for stellar mass– |
|
dependentoffsets between our masses and the true un- |
|
derlyingmasses(controlledby κ, see §3.1.1). |
|
5. We repeat steps 2-4 for all redshifts in the range cov- |
|
ered by the observed data set. We may then calculateUncertaintiesAffectingtheStellar Mass–HaloMassRelati on 13 |
|
Table 1 |
|
Summaryof Model Parameters |
|
Symbol Description PrioraSection |
|
Mh(M∗) Thehalo massfor which the average stellar massis M∗ N/A 3.4.3 |
|
M1 Characteristic Halo Mass Flat (Log) 3.4.3 |
|
M∗,0 Characteristic Stellar Mass Flat (Log) 3.4.3 |
|
β Faint-end power law ( Mh∼Mβ |
|
∗) Flat (Linear) 3.4.3 |
|
δ Massive-end sub-exponential (log10(Mh)∼Mδ |
|
∗) Flat (Linear) 3.4.3 |
|
γ Transition width between faint- and massive-end relations Flat (Linear) 3.4.3 |
|
(x)0Value of thevariable ( x) atthe present epoch, where ( x) is oneof ( M1,M∗,0,β,δ,γ) (see above) 3.4.3 |
|
(x)a Evolution of the variable ( x) with scale factor (same as for ( x)0) 3.4.3 |
|
µ Systematic offset in M∗calculations G(0,0.25) (Log) 3.1.1 |
|
κ Systematic mass-dependent offset in M∗calculations G(0,0.10) (Linear) 3.1.1 |
|
σz Redshift scaling of statistical errors in M∗calculations G(0.05,0.015) (Log) 3.1.2 |
|
ξ Scatter in M∗at fixedMh G(0.16,0.04) (Log) 3.3.1 |
|
aSee Equations 1, 5, 21-23. G(x,s) denotes a Gaussian prior centered at xwith standard deviation s, in either linear or logarithmic |
|
units. ‘Flat’ denotes auniform prior in either linear or log arithmic units. |
|
the expected GSMF in each redshift bin for which ob- |
|
servers have reported data. The likelihood of the ex- |
|
pectedGSMFsgiventhemeasuredGSMFsisthenused |
|
to determinethe nextstep intheMCMCchain. |
|
6. To account for sample variance in the observed stel- |
|
lar mass functions above z∼0.2, we recalculate each |
|
SM–HMrelationinthechainforanalternatehalomass |
|
function taken from a randomly sampled mock survey |
|
(see §3.2.4) and re-fit our functional form to the red- |
|
shift evolutionof the relation. Similarly, for the results |
|
which include cosmology uncertainty, we recalculate |
|
each SM–HM relation for an alternate halo mass func- |
|
tion randomly selected from the MCMC chain used to |
|
determinetheWMAP5 cosmologyuncertainties. |
|
7. We repeat steps 1-6 to build a joint probability distri- |
|
butionfortheSM–HMrelationandthesystematicspa- |
|
rameter space. The steps are repeated until the joint |
|
probabilitydistributionhasconvergedtotheunderlying |
|
posteriordistribution. |
|
4.RESULTS FOR0 <z<1 |
|
We now present the results of this approach to determine |
|
theSM–HMrelationandrelatedquantities. In§4.1, wecom- |
|
pareGSMFsgeneratedfromourbestfitstoobserveddataand |
|
comment on the effects of systematic observational biases. |
|
We present our best-fitting results for the SM–HM relation |
|
with full error bars in §4.2. We evaluate the relative impor- |
|
tance of each of the contributing types of error in §4.3 and |
|
summarize the most relevant contributionsin §4.3.7. Final ly, |
|
our derived SM–HM relation is compared to other published |
|
resultsin §4.4. |
|
4.1.GalaxyStellarMassFunctions |
|
To demonstrate that our functional form for Mh(M∗) is ca- |
|
pable of reproducingobserved galaxy stellar mass function s, |
|
we show a comparison between our best–fit models and the |
|
observed data in Figs. 3 and 4 at several redshifts. For our |
|
best-fit models, both φtrue(the true or “intrinsic” stellar mass |
|
function)and φmeas(theGSMFthatobserverswouldmeasure) |
|
are shown. Recall that φmeasincorporates the effects of the |
|
systematic observational biases; namely, the overall shif t in |
|
stellarmasscalculations, µ,thelinearlymass-dependentshift, |
|
κ, and the statistical errorsin stellar mass calculationsfo r in- |
|
dividual galaxies, σ(z). The fact that the best-values of thesystematic parameters ( µ,κ,ξ,σz) are very close to the cen- |
|
ters of their prior distributionsprovidesconfirmation tha t the |
|
functional form for the SM–HM relation outlined in §3.4.3 |
|
doesnotbiasourbest-fit results. |
|
As our best-fit values for µandκare close to zero (see |
|
Table 2), the differencebetween φtrueandφmeasis almost ex- |
|
clusively due to the scatter σ(z) in calculated stellar masses. |
|
The differencebetween φtrueandφmeasonly becomesevident |
|
for galaxies above 1011M⊙, where the falling slope of the |
|
GSMF becomes severe enough for the scatter σ(z) to signifi- |
|
cantly raise number counts in the observed GSMF. At z∼0, |
|
thesystematiceffectof σ(z)putstheintrinsicGSMF wellbe- |
|
lowthesmall statistical errorbars. |
|
At higher redshifts, although the effect of σ(z) is larger, |
|
current surveys at z>0.2 do not yet cover sufficient volume |
|
to constrain the shape of the GSMF well at the massive end. |
|
Nonetheless, for future wide-field surveys at z>0.2, correc- |
|
tion to the GSMF for scatter in calculated stellar masses wil l |
|
beanimportantconsideration. |
|
4.2.TheBest-Fit StellarMass–HaloMassRelations |
|
We plotthe averagestellar massas a functionofhalo mass |
|
forz= 0−1 in Figure 5 to show the evolution of the stellar |
|
mass – halo mass relation. Note that as the stellar mass at a |
|
givenhalomasshasalog-normalscatter(see §2.3),weusege- |
|
ometricaveragesforstellarmassesratherthanlinearones . To |
|
highlighttheeffectsofhalomassonstarformationefficien cy, |
|
we also present the SM–HM relation in terms of the average |
|
stellar mass fraction (stellar mass / halo mass) for z= 0−1 |
|
as a function of halo mass in the same figure. We focus on |
|
this quantity for the remainder of the paper. The best-fit pa- |
|
rameters for the function Mh(M∗) are given in Table 2, and |
|
thenumericalvaluesforthestellarmassfractionsarelist edin |
|
AppendixD. |
|
The stellar mass fractions for central galaxies consistent ly |
|
show a maximum for halo masses near 1012M⊙. While the |
|
location of this maximum evolves with time, it clearly il- |
|
lustrates that star-formation efficiency must fall off for b oth |
|
higher and lower-mass halos. The slopes of the SM–HM re- |
|
lation above and below this characteristic halo mass are in- |
|
dicative of at least two processes limiting star-formation effi- |
|
ciency,althoughmergerscomplicate direct analysis for hi gh- |
|
masshalos. Atthelow-massend,theSM–HMrelationscales |
|
asM∗∼M2.3 |
|
hatz= 0 and as M∗∼M2.9 |
|
hatz= 1. However, |
|
giventhe lack of informationabout low stellar-mass galaxi es |
|
atz>0.5,thestatisticalsignificanceofthisevolutionisweak;14 BEHROOZI,CONROY & WECHSLER |
|
-8-7-6-5-4-3-2log10(φ) [Mpc-3 (log M)-1] |
|
z = 0.1, φtrue |
|
z = 0.1, φmeas |
|
z = 0.1, Li & White (2009) |
|
9 10 11 12 |
|
log10(M*) [MO•]-0.300.3log10(φ/φmeas) |
|
Figure3. Comparison of the best fit φtrue(the true or “intrinsic” GSMF) |
|
in our model to the resulting φmeas(what an observer would report for the |
|
GSMF, which includes the effects of the systematic biases µ,κ, andσ) at |
|
z=0. Sincethebest–fitvaluesof µandκareveryclosetozero,thedifference |
|
betweenφmeasandφtruealmost exclusively comes from the uncertainty in |
|
measuring stellar masses ( σ). |
|
Table 2 |
|
Bestfits for the redshift evolution of Mh(M∗) |
|
Parameter Free ( µ,κ)µ=κ=0 Free ( µ,κ) |
|
0<z<1 0<z<1 0.8<z<4 |
|
M∗,0,010.72+0.22 |
|
−0.2910.72+0.02 |
|
−0.1211.09+0.54 |
|
−0.31 |
|
M∗,0,a0.55+0.18 |
|
−0.790.59+0.15 |
|
−0.850.56+0.89 |
|
−0.44 |
|
M∗,0,a2 N/A N /A6.99+2.69 |
|
−3.51 |
|
M1,012.35+0.07 |
|
−0.1612.35+0.02 |
|
−0.1512.27+0.59 |
|
−0.27 |
|
M1,a0.28+0.19 |
|
−0.970.30+0.14 |
|
−1.02−0.84+0.87 |
|
−0.58 |
|
β00.44+0.04 |
|
−0.060.43+0.01 |
|
−0.050.65+0.26 |
|
−0.20 |
|
βa0.18+0.08 |
|
−0.340.18+0.06 |
|
−0.340.31+0.38 |
|
−0.47 |
|
δ00.57+0.15 |
|
−0.060.56+0.14 |
|
−0.050.56+1.33 |
|
−0.29 |
|
δa0.17+0.42 |
|
−0.410.18+0.41 |
|
−0.42−0.12+0.76 |
|
−0.50 |
|
γ01.56+0.12 |
|
−0.381.54+0.03 |
|
−0.401.12+7.47 |
|
−0.36 |
|
γa2.51+0.15 |
|
−1.832.52+0.03 |
|
−1.89−0.53+7.87 |
|
−2.50 |
|
µ0.00+0.24 |
|
−0.25N/A0.00+0.25 |
|
−0.25 |
|
κ0.02+0.11 |
|
−0.07N/A0.00+0.14 |
|
−0.04 |
|
ξ0.15+0.04 |
|
−0.020.15+0.04 |
|
−0.010.16+0.07 |
|
−0.01 |
|
σz0.05+0.02 |
|
−0.010.05+0.02 |
|
−0.010.05+0.02 |
|
−0.01 |
|
Note. —See Table1 and Equations 1,5, 21-23,25. |
|
noevolutioninthelow-massslopeoftherelationisconsist ent |
|
within our one-sigma errors. Several studies (most recentl y, |
|
Baldryetal. 2008; Droryetal. 2009) have reported that the |
|
GSMF has an upturn in slope for very low stellar masses, |
|
particularly below 108.5M⊙; this would imply that our best |
|
fits may overestimate the scaling relation for galaxies belo w |
|
108.5M⊙. At the high mass end, our best fitting function re- |
|
sults in a progressively shallower relation for the growth o f |
|
stellar mass with halo mass, so that no single power law can |
|
describe the scaling. However, for halos close to 1014M⊙, |
|
the best-fit relation scales locally as M∗∼M0.28 |
|
hatz=0 and9 10 11 12 |
|
log10(M*) [MO•]-8-7-6-5-4-3-2log10(φ) [Mpc-3 (log M)-1] |
|
z = 0.5, φtrue |
|
z = 0.5, φmeas |
|
z = 0.5, Pérez-González et. al. (2008) |
|
9 10 11 12 |
|
log10(M*) [MO•]-8-7-6-5-4-3-2log10(φ) [Mpc-3 (log M)-1] |
|
z = 1.15, φtrue |
|
z = 1.15, φmeas |
|
z = 1.15, Pérez-González et. al. (2008) |
|
Figure4. Comparison of the best fit φtrue(the true or “intrinsic” GSMF) to |
|
theresulting φmeas(as in Figure 3),for z=0.5 andz=1.15. Statistical errors |
|
inindividual stellar masseshavealarger effect athigher r edshift, resulting in |
|
asteeper intrinsic bright end than measured. |
|
M∗∼M0.34 |
|
hatz=1,inaccordwithpreviousstudies(see§4.4). |
|
The results for high mass halos are also consistent with no |
|
evolutionin theslopeoftheSM–HMrelation. |
|
Figure 6 shows the stellar mass fraction for 0 <z<1 ex- |
|
cluding the effects of systematic shifts in stellar mass cal cu- |
|
lations (i.e., assuming µ=κ=0). Under the assumption that |
|
systematic errorsin stellar mass calculations result in si milar |
|
biasesin stellar masses at z=0 as they do at higherredshifts, |
|
thisallowsustoconsidertheevolutioninnormalizationof the |
|
SM–HM relation. Low-mass halos (below 1012M⊙) display |
|
clearlyhigherstellar massfractionsat lateredshiftstha nthey |
|
doatearlyredshifts. Bycontrast,theevolutioninstellar mass |
|
fractionsfor high mass halos (above 1013.5M⊙) is not statis- |
|
ticallysignificant,anditisconstrainedtobesubstantial lyless |
|
than for low-mass halos. In the time since z= 1, this means |
|
thatthe star formationrates forhigh-masshalostypically fall |
|
relative to their dark matter accretion rates, whereas the o p- |
|
posite is true for low-mass halos (Conroy&Wechsler 2009). |
|
The best-fitting parameters for the SM–HM relation assum- |
|
ingµ=κ=0 appear in Table 2, and the data pointsin Figure |
|
6appearinAppendixD. |
|
4.3.ImpactofUncertaintiesUncertaintiesAffectingtheStellar Mass–HaloMassRelati on 15 |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]89101112log10(M*) [MO•] |
|
z = 0.1 |
|
z = 0.5 |
|
z = 1.0 |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.1 |
|
z = 0.5 |
|
z = 1.0 |
|
Figure5. Top panel : Stellar mass – halo mass relation as a function of red- |
|
shift for our preferred model. Bottom panel : Evolution of the derived stellar |
|
mass fractions ( M∗/Mh). In each case, the lines show the mean values for |
|
central galaxies. These relations also characterize the sa tellite galaxy pop- |
|
ulation if the horizontal axis is interpreted as the halo mas s at the time of |
|
accretion. Errors bars include both systematic and statist ical uncertainties, |
|
calculated for afixed cosmological model (with WMAP5parame ters). |
|
4.3.1.Systematic ShiftsinStellar Mass Calculations |
|
ByfarthelargestcontributortotheerrorbudgetoftheSM– |
|
HM relation is the systematic error parameter µ. As the ef- |
|
fect ofµis to multiply all stellar masses by a constant factor, |
|
and as the width of the error bars in Figure 5 correspondsal- |
|
mostexactlytotheprioron µ,wemayconcludethatreducing |
|
the error on the systematic shifts in stellar mass calculati ons |
|
wouldrepresent the single largest improvementin ourunder - |
|
standingoftheshapeoftheSM–HMrelation. Figure6shows |
|
thesubstantiallysmallererrorbarsthatresultifsystema ticer- |
|
rors(µandκ)inthe stellarmasscalculationsareneglected. |
|
4.3.2.Scatter inStellar Mass at FixedHalo Mass |
|
The effect of ignoring scatter in stellar mass at fixed halo |
|
mass(i.e.,setting ξ=0)isshownat tworedshiftsinFigure7. |
|
We find that the changeis insignificant below halo masses of |
|
1012M⊙, and is within statistical error bars below 1013M⊙ |
|
forz=1. Thisisaresultofthefactthattheslopeofthestellar |
|
mass function below 1010.5M⊙in stellar mass (correspond- |
|
ing to 1012M⊙in halo mass) is not steep enough for scat-11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.1 |
|
z = 0.5 |
|
z = 1.0 |
|
Figure6. Evolution of the derived stellar mass fractions ( M∗/Mh) in the |
|
absence of systematic errors. This result is analogous to Fi gure 5, bottom |
|
panel, calculated under theassumption thatthetrue values ofthesystematics |
|
µandκin thestellar mass function are zero at all redshifts. |
|
tertohavesignificantimpact(seealsoTasitsiomi et al.200 4). |
|
Becauseξ >0 results in high stellar–mass galaxies being as- |
|
signedtolower-masshalosthantheywouldbeotherwise(due |
|
to the higher numberdensity of lower-mass halos), the effec t |
|
is that higher-masshalos contain fewer stars on average tha n |
|
they would for ξ=0. The effect of setting ξ=0 exceedssys- |
|
tematicerrorbarsonlyfortheveryhighestmasshalos,abov e |
|
1014.5M⊙. |
|
We note that our posterior distribution constrains ξto be |
|
less than 0.22 dex at the 98% confidence level. Higher val- |
|
ues forξwould result in GSMFs inconsistent with the steep |
|
falloff of the Li &White (2009) GSMF (see also discussion |
|
inGuoetal. 2009). |
|
4.3.3.Statistical ErrorsinStellar Mass Calculations |
|
The significance of includingor excludingrandomstatisti- |
|
calerrorsinstellarmasscalculations, σ(z),isalsoshownFig- |
|
ure7. TheeffectofthistypeofscatterontheSM–HMrelation |
|
is mathematically identical to the effect of scatter in stel lar |
|
mass at fixed halo mass. As σ(z= 0) (∼0.07 dex) is much |
|
smaller than the expected value of ξ(∼0.16 dex), the con- |
|
volution of the two effects is only marginally different fro m |
|
including ξaloneatz=0;thisresultsinonlyaminoreffecton |
|
the SM–HM relation. The effect becomes more pronounced |
|
atz=1forthereasonthat σ(z=1)(∼0.12dex)becomesmore |
|
comparableto ξ—andsoincludingtheeffectsofstatisticaler- |
|
rorsin stellar massbecomesas importantasmodelingscatte r |
|
instellar massat fixedhalomass. |
|
4.3.4.Cosmology Uncertainties |
|
InFigure8,weshowacomparisonofbestfitsforthestellar |
|
mass fraction using abundance matching with three differen t |
|
halo mass functions: analytic prescriptions for WMAP5 and |
|
WMAP1 (see §3.2.2) as well as the mass function taken di- |
|
rectly from the L80G simulation(see §3.2.1). The differenc e |
|
betweentheL80GsimulationandtheanalyticWMAP1mass |
|
functionisslight,astheL80GsimulationusesWMAP1initia l |
|
conditions( h=0.7,Ωm=0.3,ΩΛ=0.7,σ8=0.9,ns=1); the |
|
differenceisconsistentwithsamplevariancefortherelat ively |
|
small (80 h−1Mpc)size ofthe simulation. Thedifferencebe- |
|
tween SM–HM relations using WMAP1 and WMAP5 cos-16 BEHROOZI,CONROY & WECHSLER |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.1 (incl. σ(z), ξ=0.16dex) |
|
z = 0.1 (excl. σ(z), ξ=0.16dex) |
|
z = 0.1 (incl. σ(z), ξ=0.0dex) |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 1.0 (incl. σ(z), ξ=0.16dex) |
|
z = 1.0 (excl. σ(z), ξ=0.16dex) |
|
z = 1.0 (incl. σ(z), ξ=0.0dex) |
|
Figure7. Comparison between SM–HM relations derived in the preferre d model (including the effects of the statistical errors σ(z) and taking the scatter in |
|
stellar mass at a given halo mass to be ξ= 0.16dex) to those excluding the effects of σ(z) or taking ξ= 0, atz= 0 (left panel ) andz= 1 (right panel ). Light |
|
shaded regions denote 1- σerrors including both systematic and statistical errors; d ark shaded regions denote the 1- σerrors if the systematic offsets in stellar |
|
masscalculations ( µandκ)are fixed to 0. |
|
mologies is within the systematic errors at all masses. When |
|
systematic errors are neglected, the two cosmologies yield |
|
SM–HM relations that are noticeably different only at low |
|
halomasses( M<1012M⊙). |
|
Figure 9 show the results of including uncertainties in the |
|
WMAP5cosmologicalparameters. Asdescribedin§3.1,this |
|
is doneusinghalo mass functionscalculated with parameter s |
|
resampled from the cosmological parameter chains provided |
|
by the WMAP team. Only at z∼0 are the changes in error |
|
bars significant enough to justify mention. Here, the uncer- |
|
tainty in cosmology begins to exceed other sources of statis - |
|
tical error for halos below 1012M⊙due to the small errors |
|
on the GSMF at the stellar masses associated with such ha- |
|
los(Li &White2009). However,thecosmologyuncertainties |
|
arestill well withinthesystematicerrorbars. |
|
4.3.5.Sample Variance |
|
Because of the large volumeof the SDSS, sample variance |
|
contributesinsignificantlytotheerrorbudgetfortheSM–H M |
|
relationbelow z=0.2. Abovethatredshift,thecomparatively |
|
limitedsurveyvolumeofPérez-Gonzálezetal.(2008)resul ts |
|
in sample variance becoming an important contributor to the |
|
statistical error for halos below 1012M⊙(Poisson noise dom- |
|
inatesforlargerhalos). Iftheeffectsofsamplevariancew ere |
|
ignored, the statistical error spreads for our derived SM–H M |
|
relations at z=1 would shrink from 0.12 dex to 0.09 dex for |
|
1011M⊙halos, and from 0.05 dex to 0.04 dex for 1012.25M⊙ |
|
halos. As with other types of errors, these considerationsa re |
|
well belowthelimitsofthesystematic errorbars. |
|
We caution that our error bars including sample variance |
|
atz>0 have a very specific meaning. Namely, they include |
|
the standard deviation in our fitting form which might be ex- |
|
pected if the surveyin Pérez-Gonzálezet al. (2008) had been |
|
conductedonalternatepatchesofthesky. Samplevariancea t |
|
redshiftsz>0 impacts only the linear evolution of the SM– |
|
HM relations we derive, as the large volume probed by the |
|
SDSSconstrainstheSM–HMrelationverywell at z∼0. Be- |
|
cause our fit is matched to the ensemble of reported data be- |
|
tween 0<z<1, it is less vulnerableto the effects of sample |
|
varianceinindividualredshiftbins. Instead,itisaffect edmost |
|
by overall shifts in the number densities reported for the en -tire high-redshift survey. While this means that our fit give s |
|
a more robust SM–HM relation at all redshifts, some caution |
|
must be used when comparing our relation to results derived |
|
from the GSMF in a single redshift bin (e.g., 0 .2<z<0.4). |
|
Thesewillhavemuchlargeruncertaintiesduetosamplevari - |
|
ancethan SM–HM relationsderived(like ours)fromGSMFs |
|
alongalightconeprobinga largeredshiftrange. |
|
Todemonstratethecredibilityofourapproachforcalculat - |
|
ing the appropriate error bars including sample variance, w e |
|
repeated our analysis of the SM–HM relation using GSMFs |
|
from Droryetal. (2009) (which appeared as we were com- |
|
pleting this work) instead of Pérez-Gonzálezetal. (2008) |
|
for 0.2<z<1 and retaining the GSMF from Li &White |
|
(2009) for z<0.2. Although the COSMOS survey in |
|
Droryetal. (2009) covers a much larger area ( ∼9x the area |
|
in Pérez-Gonzálezet al. 2008), the fact that it is a single |
|
fieldmeansthatthe expectedsamplevarianceis onlyslightl y |
|
smaller than for the combined fields in Pérez-Gonzálezet al. |
|
(2008). Asmightbeexpected,theSM–HMrelationat z=0.1 |
|
using the Droryet al. (2009) GSMF is identical to the result |
|
in Figure 6 because of the strong constraining power of the |
|
SDSS data sample. At z=1, the SM–HM relation generated |
|
by using the Droryet al. (2009) GSMF is within our quoted |
|
statistical and sample varianceerrors, as shown in Figure 1 2. |
|
This may not be surprising unless one considers that clus- |
|
tering results suggest an overdensity at the 2-3 σlevel in the |
|
COSMOS redshift bin z=1 (Meneuxetal. 2009). However, |
|
becauseourmethodfitstheDroryetal.(2009)GSMFsacross |
|
the entire redshift range, the excess at z=1 is partially offset |
|
by an underdensity at z= 0.5. This demonstrates the robust- |
|
ness of our fitting method to the effects of sample variance |
|
exceptonthescaleofthe entiresurvey. |
|
4.3.6.Satellite Treatment |
|
Finally, we consider the changes in both the stellar mass |
|
fraction and total stellar mass fraction (total stellar mas s in |
|
central galaxy and all satellites / total halo mass) induced by |
|
different satellite evolution models (see §3.3.2 for detai ls on |
|
thetwomodels). AsshowninFigure10,fixingsatellitestell ar |
|
mass at the redshift of accretion (lines labeled as “SMF acc”) |
|
hasvirtuallynoeffectoneitherfractionascomparedtoall ow-UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 17 |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.1 (WMAP5) |
|
z = 0.1 (L80G) |
|
z = 0.1 (WMAP1) |
|
Figure8. Comparison between stellar mass fractions in different cos molo- |
|
gies. Lightshaded regionsdenotesystematicerrorspreads whiledarkshaded |
|
regions denote error spreads assuming µ=κ= 0, both about the WMAP5 |
|
model. The dot-dashed blue line shows the fiducial relation f or a WMAP1 |
|
cosmological model (using our analytic model) The dashed re d line shows |
|
therelation forasimulation oftheWMAP1cosmology. Differ ences between |
|
this and the analytic modelare within the expected sampleva riance errors. |
|
ing satellite stellar mass to evolve the same way as centrals |
|
with the same mass (labeled as SMF now). Because compar- |
|
ison of different satellite evolution models requires trac king |
|
satellites through merger trees, Figure 10 shows results on ly |
|
forsatellites intheL80Gsimulation. |
|
Thetreatmentofsatellitesmayhaveasomewhatlargerim- |
|
pact on the total stellar mass fraction, including the stell ar |
|
massofbothcentralandsatellite galaxieswithin a halo. Th is |
|
is shown for both models in Figure 10. Because of the steep |
|
fall-off in stellar mass for low mass galaxies, the total ste llar |
|
mass fraction has only minimal contribution from satellite s |
|
forlowmasshalos,anddeviatessignificantlyfromthestell ar |
|
massfractionforcentralsonlyathalomasses Mh>1012.5M⊙. |
|
At cluster-scale masses ( Mh∼1014M⊙), accreted satellites |
|
haveonaveragea higherratio ofstarsto darkmatter thanthe |
|
centralgalaxy,andthetotalstellarmassfractioncanbema ny |
|
times the central stellar mass fraction. However, the impac t |
|
ofthetwomodelsforsatellitetreatmentonthisratioissma ll. |
|
Profilesofsatellitegalaxiesinclustersshouldbeabletob etter |
|
distinguishbetweensuchmodels. |
|
4.3.7.Summary of Most Important Uncertainties |
|
Systematic stellar mass offsets resulting from modeling |
|
choices result in the single largest source of uncertaintie s |
|
(∼0.25 dex at all redshifts). The contribution from all other |
|
sourcesof error is much smaller, rangingfrom 0.02-0.12dex |
|
atz= 0 and from 0.07-0.16 dex at z= 1. On the other hand, |
|
this statement is only true when all contributing sources of |
|
scatter in stellar masses are considered. Models that do not |
|
accountforscatterinstellarmassatfixedhalomasswillove r- |
|
predict stellar masses in 1014.25M⊙halos by 0.13-0.19 dex, |
|
depending on the redshift. Models that do not account for |
|
scatterincalculatedstellarmassatfixedtruestellarmass will |
|
overpredictstellar masses in 1014.25M⊙halos by 0.12 dex at |
|
z= 1. Hence, it is important to take both these effects into |
|
account when considering the SM–HM connection either at |
|
highmassesorat highredshifts.11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.1 |
|
Figure9. Effect of cosmological uncertainties on the stellar mass fr action |
|
atz= 0.1. The error bars show the spread in stellar mass fractions in clud- |
|
ing both statistical errors and cosmology uncertainties (f rom WMAP5 con- |
|
straints, Komatsu etal. 2009). For comparison, the light sh aded region in- |
|
cludesstatistical andsystematicerrors,whilethedarksh adedregionincludes |
|
only statistical errors. |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.0 (L80G) [SMFnow] |
|
z = 0.0 (L80G) [SMFacc] |
|
z = 0.0 (L80G) [SMFnow] (Total M*/Mh) |
|
z = 0.0 (L80G) [SMFacc] (Total M*/Mh) |
|
Figure10. Comparison between stellar massfractions and total stella r mass |
|
fractions(labeled as“TotalM ∗/Mh”)derived byassumingdifferentmatching |
|
epochs for satellite galaxies. The L80G simulation was used here in order |
|
to follow the accretion histories of the subhalos. The relat ions terminate at |
|
highmasseswherethehalo statistics becomeunreliable due tofinite–volume |
|
effects. |
|
4.4.Comparisonwith otherwork |
|
Acomparisonofourresultswithseveralresultsintheliter - |
|
atureatz∼0.1isshowninFigure11. Suchcomparisonisnot |
|
always straightforward, as other papers have often made dif - |
|
ferentassumptionsforthecosmologicalmodel,thedefiniti on |
|
of halo mass, or the measurement of stellar mass. In addi- |
|
tion, some papers report the average stellar mass at a given |
|
halomass(aswedo),andothersreporttheaveragehalomass |
|
at a given stellar mass. Given the scatter in stellar mass at |
|
fixedhalomass,theaveragingmethodcanaffecttheresultin g |
|
stellarmassfractions,particularlyforgroup-andcluste r-scale |
|
halo masses. To facilitate comparison with both approaches , |
|
we plot our main results (labeled as “ ∝angbracketleftM∗/Mh|Mh∝angbracketright”) along |
|
withresultsforwhichthestellarmassfractionshavebeena v- |
|
eraged at a given stellar mass (labeled as “ ∝angbracketleftM∗/Mh|M∗∝angbracketright”).18 BEHROOZI,CONROY & WECHSLER |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh)This work, < M*/Mh | Mh > |
|
This work, M* / < Mh | M* > |
|
Moster et al. 2009 (AM) |
|
Guo et al. 2009 (AM) |
|
Wang & Jing 2009 (AM+CC) |
|
Zheng et al. 2007 (HOD) |
|
Mandelbaum et al. 2006 (WL) |
|
Klypin et al. in prep. (SD) |
|
Gavazzi et al. 2007 (SL) |
|
Yang et al. 2009a (CL) |
|
Hansen et al. 2009 (CL) |
|
Lin & Mohr 2004 (CL) |
|
Figure11. Comparison of our best-fit model at z= 0.1 to previously published results. Results shown include ot her results from abundance matching |
|
(Moster etal. 2009 and Guo et al. 2009); abundance matching p lus clustering constraints (Wang &Jing 2009); HOD modeling (Zheng etal. 2007); direct mea- |
|
surements from weak lensing (Mandelbaum etal. 2006), state llite dynamics (Klypin et al. 2009) and strong lensing (Gava zzi etal. 2007); and clusters selected |
|
from SDSS spectroscopic data (Yang etal. 2009a), SDSS photo metric data (the maxBCG sample Hansen et al. 2009), and X-ray selected clusters (Lin &Mohr |
|
2004). Dark grey shading indicates statistical and sample v ariance errors; light grey shading includes systematic err ors. Thered line shows our results averaged |
|
over stellar mass instead of halo mass;scatter affects thes e relations differently athigh masses. Theresults of Mande lbaum et al. (2006)and Klypin etal. (2009) |
|
are determined by stacking galaxies in bins of stellar mass, and so aremoreappropriately compared to this red line. |
|
In the comparisons below, we have not adjusted the assump- |
|
tions used to derive stellar masses, because such adjustmen ts |
|
can be complex and difficult to apply using simple conver- |
|
sions. Additionally,we haveonlycorrectedfordifference sin |
|
the underlyingcosmology for those papers using a variant of |
|
abundance matching method (Mosteret al. 2009; Guoetal. |
|
2009; Wang &Jing 2009; Conroyetal. 2009) using the pro- |
|
cess described in Appendix A, as alternate methods require |
|
corrections which are much more complicated. We have, |
|
however,adjustedtheIMFofall quotedstellarmassesto tha t |
|
of Chabrier (2003), and we have converted all quoted halo |
|
massestovirialmassesasdefinedin §3.2.2. |
|
Theclosestcomparisonwithourwork,usingaverysimilar |
|
method, is the result from Mosteretal. (2009). This result i s |
|
in excellent agreementwith oursat the high mass end, and is |
|
within our systematic errorsfor all masses considered. How - |
|
ever, their less flexible choice of functional form, and thei r |
|
use of a different stellar mass function(estimated from spe c- |
|
troscopy using the results of Panteret al. 2007) results in a |
|
differentvalueforthehalomass Mpeakwithpeakstellarmass |
|
fractionandashallowerscalingofstellarmasswithhaloma ssat the low mass end. Their error estimates only account for |
|
statisticalvariationsingalaxynumbercounts,andtheydo not |
|
include sample variance or variations in modeling assump- |
|
tions. Guoet al.(2009)useasimilarapproachtoMosteret al . |
|
(2009),usingstellarmassesfromLi& White(2009),butthey |
|
do not account for scatter in stellar mass at fixed halo mass. |
|
Consequently, their results match ours for 1012M⊙and less |
|
massive halos, but overpredict the stellar mass for larger h a- |
|
los. |
|
Wang&Jing (2009) use a parameterization for the SM– |
|
HM relation for both satellites and centrals, and they attem pt |
|
to simultaneously fit both the stellar mass function and clus - |
|
tering constraints, including the effects of scatter in ste llar |
|
massatfixedhalomass. At z∼0.1,theirdatasourcematches |
|
ours (Li&White 2009), but their approach finds a best-fit |
|
scatter in stellar mass at fixed halo mass of ξ= 0.2 dex, es- |
|
sentially the highest value allowed by the stellar mass func - |
|
tion(Guoet al.2009). Asthisishigherthanourbest-fitvalu e |
|
forξ, their SM–HM relation falls below ours for high-mass |
|
galaxies. Possiblybecauseofthelimitedflexibilityofthe irfit- |
|
tingform(theyuseonlyafour-parameterdoublepower-law) ,UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 19 |
|
their SM–HM relation is in excess of ours for halo masses |
|
near1012M⊙. |
|
Zhengetal. (2007) used the galaxy clustering for |
|
luminosity-selectedsamplesintheSDSStoconstraintheha lo |
|
occupation distribution. This gives a direct constraint on the |
|
r−band luminosity of central galaxies as a function of halo |
|
mass. Stellar masses for this sample were determined us- |
|
ing theg−rcolor and the r-band luminosity as given by |
|
theBell etal. (2003) relation,anda WMAP1 cosmologywas |
|
assumed. This method allows for scatter in the luminosity |
|
at fixed halo mass to be constrained as a parameter in the |
|
model; results for this scatter are consistent with Moreeta l. |
|
(2009), although they are less well constrained. According |
|
toLi &White (2009), stellar massesfortheBell et al. (2003) |
|
relation are systematically larger than those calculated u sing |
|
Blanton&Roweis(2007) by0.1–0.3dex. However,as Ωmin |
|
WMAP1 is larger than in WMAP5, halo masses in WMAP1 |
|
will be higher at a given number density than in WMAP5, |
|
somewhatcompensatingforthehigherstellarmasses. |
|
We next compare to constraints from direct measure- |
|
mentsofhalomassesfromdynamicsorgravitationallensing . |
|
Mandelbaumetal. (2006) have used weak lensing to mea- |
|
sure the galaxy–mass correlation function for SDSS galax- |
|
ies and derive a mean halo mass as a function of stellar |
|
mass. Mandelbaumet al. (2006) assume a WMAP1 cos- |
|
mology and uses spectroscopic stellar masses, calculated p er |
|
Kauffmannetal. (2003). Klypin et al (in preparation) have |
|
derived the mean halo mass as a function of stellar mass us- |
|
ing satellite dynamicsof SDSS galaxies(see also Pradaetal . |
|
2003; vandenBoschet al. 2004; Conroyet al. 2007). Their |
|
results are generally within our systematic errors but lowe r |
|
than others at the lowest masses and with a somewhat dif- |
|
ferent shape. This may be due to selection effects, as their |
|
work uses only isolated galaxies, which may have somewhat |
|
loweraveragestellarmasses. Gavazziet al.(2007)useaset of |
|
stronglensesfromthe SLACS surveyalong with a modelfor |
|
simultaneouslyfitting the stellar anddarkmatter componen ts |
|
ofthestackedlensprofiles. Thisresult,atonemassscale,i sa |
|
bithigherthanourerrorrangebutwithin1.5 σ. Theselection |
|
effects relevant to strong lenses are beyond the scope of thi s |
|
paper; however, within the effective radius, the stellar ma ss |
|
can easily contribute more to the lensing effect than the dar k |
|
matter. Thus,atanygivenhalomass,thehaloswithlessmas- |
|
sivegalaxiesaremuchlesslikelytobestronglenses,resul ting |
|
inabiastowardshigherstellarmassfractionsinstronglen ses |
|
ascomparedtohalosselectedat random. |
|
Atthehighmassend,onecandirectlyidentifyclustersand |
|
groups corresponding to dark matter halos, and measure the |
|
stellar masses of their central galaxies. Yanget al. (2009a ) |
|
useagroupcatalogmatchedtohalostodeterminehalomasses |
|
(viaaniteratively-computedgroupluminosity–massrelat ion). |
|
StellarmassesinthisworkaredeterminedusingtheBell eta l. |
|
(2003)relationbetween g−rcolorand M/L; a WMAP3 cos- |
|
mologywasassumed. Theirresultsagreeverywell withours |
|
for low-masshalos, but they beginto differ at highermasses . |
|
This may be partially due to scatter between their calculate d |
|
halo masses (based on total stellar mass in the groups) and |
|
the true halo masses, resulting in additional scatter in the ir |
|
stellar masses at fixed halo mass. It could also be due to dif- |
|
ferences in stellar modeling; their results remain at all ti mes |
|
within oursystematic errors. We also compareto directmea- |
|
surements of massive clusters by Hansenet al. (2009) and |
|
Lin&Mohr (2004). In order to convert luminosities to stel- |
|
lar masses, we assume M/Li0.25= 3.3M⊙/L⊙,i0.25andM/LK= 0.83M⊙/L⊙,Kbased on the population synthesis code of |
|
Conroyetal.(2009). Thesemeasurementsarebothsomewhat |
|
higherthanourresultsformassiveclusters,theone-sigma er- |
|
ror estimates overlap. The discrepancies may be due to is- |
|
sues with cluster selection and with modeling scatter in the |
|
mass-observable relation; in each case the cluster mass is a n |
|
average mass for the given observable (X-ray luminosity or |
|
cluster richness), and can result in a bias if central galaxi es |
|
are correlated with this observable. More detailed modelin g |
|
of the scatter and correlations will be required to determin e |
|
whetherthisis canaccountfortheoffsets. |
|
A comparison of our results to others at z∼1 is shown in |
|
Figure 12. As may be expected, it is much harder to directly |
|
measurethe SM–HM relationat higherredshifts, resultingi n |
|
relatively fewer published results with which we may com- |
|
pare. We first note that we have compared the impact of |
|
two independent measurements of the GSMF from different |
|
surveys. As discussed in 4.3.5, because we simultaneously |
|
fit our model with linear evolution to the GSMF at redshifts |
|
0<z<1, our results are less sensitive to sample variance. |
|
In contrast to the conclusion of Droryet al. (2009) which fit |
|
theirresultstospecificredshiftbins,Figure12showsthat the |
|
Droryetal. (2009) and Pérez-Gonzálezetal. (2008) results |
|
are in agreement within statistical errors at z∼1 when fit- |
|
tingthefullredshiftrange. TheresultsinMosteret al.(20 09) |
|
are also very similar to ours at z∼1. However, Mosteret al. |
|
(2009)donotgivefitsfortheSM–HMrelationwhichinclude |
|
the effects of scatter in stellar mass at fixed halo mass excep t |
|
atz∼0anddonotingeneralincludescatterinmeasuredstel- |
|
lar mass with respect to the true stellar mass. Hence, we in- |
|
clude for comparison an SM–HM relation derived using our |
|
analysis but excluding both of these effects. The remaining |
|
deviance most likely stems from sample variance due to the |
|
muchsmallersurveyvolumeonwhichtheirfit isbased. |
|
Atz∼1, Wang& Jing (2009) make use of clustering |
|
data and stellar mass functions from the VVDS survey |
|
(Meneuxet al. 2008; Pozzettiet al. 2007) at z∼0.8.At the |
|
sametime,thehigh-massandlow-massslopesoftheirpower- |
|
law relation are not re-fit for the higher redshift, leading t o |
|
similar deviations from our results as at z∼0.1. The results |
|
in Zhenget al. (2007) lie slightly below our results at z∼1. |
|
This is partially due to their use of a WMAP1 cosmology. |
|
However,it isdifficultto say exactlyhowmuch,as theirstel - |
|
lar masses at z∼1 are a hybrid of Ks-derived masses from |
|
Bundyetal.(2006)andcolor–basedmassesderivedinaman- |
|
ner analogousto Bell et al. (2003). Nonetheless, they remai n |
|
wellwithinoursystematicerrorbars. |
|
We also include a comparison to the z= 1 SM–HM rela- |
|
tion presented in Conroy& Wechsler (2009), who also use |
|
an abundance matching technique to assign galaxies to ha- |
|
los. Unique to the work of Conroy& Wechsler (2009) is |
|
their attempt to jointly fit both the redshift–dependent ste l- |
|
lar mass functions and the redshift–dependentstar formati on |
|
rate – stellar mass relations. In their model, halo growth is |
|
tracked through time using results derived from halo merger |
|
trees, allowing galaxies to be identified across epochs. The |
|
evolution of halos in conjunction with standard abundance |
|
matchingprovidesmodelpredictionsforstarformationrat es. |
|
The SM–HM relation from Conroy&Wechsler (2009) lies |
|
slightly above our best–fit relation, and it is within statis tical |
|
errorbars exceptat the veryhighest halo masses. Thisis due |
|
tothedifferentassumptionsmadeabouttheGSMFinthetwo |
|
worksandalso to the absenceofcorrectionsfor thescatter i n |
|
stellarmassat fixedhalomassinConroy&Wechsler (2009).20 BEHROOZI,CONROY & WECHSLER |
|
Finally, the strong lensing survey of Gavazzietal. (2007) |
|
has been extended by (Lagattutaetal. 2009) out to z∼0.9 |
|
using lenses observed in the CASTLES program, as well as |
|
in COSMOS and in the EGS. While the same caveats about |
|
selection effects apply as for lower redshifts, Lagattutae tal. |
|
(2009) find that the evolution in the stellar mass fraction fo r |
|
Mh∼1013.5M⊙halosiswithin0-0.3dexgreaterat z∼0.9as |
|
compared to z∼0, consistent with our limits of 0-0.15 dex |
|
forthe allowedevolutionoverthatredshiftinterval. |
|
5.RESULTS BEYOND z=1 |
|
5.1.MethodologyandDataLimitations |
|
As discussed in §2.1.2, published results for the galaxy |
|
stellar mass function beyond z= 1 suffer from the important |
|
caveat that integrated SFRs are inconsistent with galaxy st el- |
|
lar mass functions when both sets of observations are taken |
|
at face value with a constant IMF. Nonetheless, one may use |
|
similar methodology as in §3 to derive stellar mass – halo |
|
mass relations at higher redshifts under the assumption tha t |
|
the observed stellar mass functions are correct. Here we as- |
|
sume the GSMFs of Marchesiniet al. (2009), which cover a |
|
redshiftrangeof1 .3<z<4. |
|
AsthereisnoguaranteethattheevolutionoftheSM–HM |
|
relation at high redshifts will have the same form as its evo- |
|
lutionatlowredshifts,were-examinetheassumptionsaffe ct- |
|
ing our evolution parameterization in Equation 23. As with |
|
all current high-redshift data, the results in Marchesinie tal. |
|
(2009) are limited to luminous (massive) galaxies, so littl e |
|
information about the value of β(the faint-end slope of the |
|
galaxy-halo mass relation) is available. Hence, we continu e |
|
to assume a linear functional form for its evolution; as the |
|
valueofβevolveslinearlywith scalefactor( a)inourfit, this |
|
means that it is largely constrained to be consistent with th e |
|
evolutionat lowerredshifts(1 <z<2). Naturally,if theevo- |
|
lution ofβat high redshifts is significantly different than for |
|
1<z<2,thenourerrorbarsfor βmayunderestimatethefull |
|
uncertaintiesintheparameter. |
|
Additionally, the systematics affecting high-mass galaxi es |
|
at high redshifts are much more severe than for z<1. Not |
|
onlyaretheerrorsinstellarmasscalculationssignificant (due |
|
to larger photometry errors, limited templates, etc.), but any |
|
miscalibration in correcting photometric redshift errors will |
|
result in low-redshift galaxies masquerading as very brigh t |
|
high-redshift galaxies. These combined uncertainties res ult |
|
in poor constraints on high-mass galaxies. For that reason, |
|
we do not attempt to assume a more complicated functional |
|
formforthe evolutionof δandγ, whichmeansasbeforethat |
|
theirratesofevolutionarelargelyconstrainedtobeconsi stent |
|
withlowerredshifts. |
|
However, we find that individual fits at each redshift do |
|
suggestapossibleevolutionforthecharacteristicstella rmass |
|
which is nonlinear in the scale factor. Hence, we expand the |
|
form of the evolution of M∗,0to include a quadratic depen- |
|
denceonscale factor: |
|
M∗,0(a)=M∗,0,0+M∗,0,a(a−1)+M∗,0,a2(a−0.5)2,(25) |
|
where (a−0.5)2is used instead of ( a−1)2to minimize the |
|
degeneracy between M∗,0,aandM∗,0,a2. We parameterize the |
|
evolutionof all other parametersas in Equation23. All othe r |
|
methodologyremainsthe same as for lower redshifts, as out- |
|
linedin§3.6. |
|
5.2.Results11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
This work |
|
This work, Drory et al. 2009 GSMF |
|
This work, ( σ(z) = 0, ξ=0) |
|
Moster et al. 2009 (AM) |
|
Wang & Jing 2009 (AM+CC) |
|
Zheng et al. 2007 (HOD) |
|
Conroy & Wechsler 2009 (AM) |
|
Figure12. Comparison of our best-fit model at z= 1.0 for different model |
|
assumptionsandtopreviously published results. Darkgrey shading indicates |
|
statistical and sample variance errors; light grey shading includes system- |
|
atic errors. The error bars for the red line, calculated usin g the Drory etal. |
|
(2009)GSMFincludestatistical errorsonly—i.e.,theydon otincludesample |
|
variance. Theresults ofMoster etal.(2009)(green line) do notinclude mod- |
|
eling of scatter or statistical errors in stellar masses, so for comparison, we |
|
present ourresults excluding the effects of σ(z) andξ(blue line). Theresults |
|
of Conroy &Wechsler (2009) made slightly different assumpt ions about the |
|
stellar massfunction evolution. |
|
To maintain some overlapwith the z<1 results, we evalu- |
|
atethelikelihoodfunctionforeachSM–HMrelationagainst |
|
GSMFsfor0 .8<z<4. Thisdatarangeincludestworedshift |
|
bins from Pérez-Gonzálezet al. (2008) (0.8-1.0, 1.0-1.3)a nd |
|
three redshift bins from Marchesiniet al. (2009) (1.3-2, 2- 3, |
|
3-4). IncludingmoreredshiftbinsfromPérez-Gonzálezet a l. |
|
(2008) would improve the continuity of the fits to the low- |
|
redshift results; however, doing so would require a more |
|
complicated redshift parameterization than what we have as - |
|
sumed. The evolution of the best-fit stellar mass fraction fo r |
|
0<z<4isshowninFigure13. AlldatapointsforFigure13 |
|
arelistedin AppendixD. |
|
Asmaybeexpected,uncertaintiesathighredshiftsaresub- |
|
stantially larger than at lower redshifts. The contributio n of |
|
systematic errors in stellar masses to the error budget (0.2 5 |
|
dex) is still important, but it is no longer the only dominant |
|
factor. Statistical errorsdue to the comparativelysmall n um- |
|
ber of galaxy observationsat highredshifts can contribute an |
|
equaluncertainty(up to 0.25dex)to the derivedSM–HM re- |
|
lation. The statistical errors are large not only for massiv e |
|
galaxies with low number counts, but also for halos below |
|
1012M⊙, where magnitude limits on surveys make observa- |
|
tionsofthecorrespondinggalaxiesdifficult. |
|
The contribution from other sources of uncertainties (e.g. , |
|
sample variance, cosmology uncertainties) is substantial ly |
|
smaller than the current statistical errors. The effectsof sam- |
|
ple variance on uncertainties at high redshift is less than f or |
|
low redshifts because the volume probed in the high redshift |
|
sample is five times larger than for the low redshift sample |
|
(≈5×106Mpc3vs. 106Mpc3, respectively). While cos- |
|
mology uncertainties are somewhat larger at high redshifts , |
|
theircontributiontotheoveralllevelsofuncertaintyare again |
|
much smaller than the statistical errors, as was true even by |
|
z=1forthe low-redshiftsample. |
|
The statistical uncertainties at high redshifts mean that i t |
|
is difficult to draw strong conclusions about the evolutionUncertaintiesAffectingtheStellar Mass–HaloMassRelati on 21 |
|
11 12 13 14 15 |
|
log10(Mh) [MO•]-4-3.5-3-2.5-2-1.5log10(M* / Mh) |
|
z = 0.1 |
|
z = 1.0 |
|
z = 2.0 |
|
z = 3.0 |
|
z = 4.0 |
|
Figure13. Evolution of the derived stellar mass fractions for central galax- |
|
ies, from z=4 to the present. The best–fit relations are shown only over t he |
|
mass range where constraining data are available. At higher redshifts, cer- |
|
tainty about the shape of the curves drops precipitously owi ng to a lack of |
|
constraining data beyond the knee of the stellar mass functi on. Combined |
|
systematic and statistical error bars areshown for three re dshift bins only. |
|
of the SM–HM relation. However, the indication is that the |
|
mass corresponding to the peak efficiency for star formation |
|
evolves slowly, and is roughly a factor of five larger at z=4. |
|
At all redshifts, the integrated star formation peaks at ∼10- |
|
20 per cent of the universal baryon fraction; the current dat a |
|
indicatesthat this value may start high at veryhigh redshif ts, |
|
shrinkashalosgrowfasterthantheyformstars,andthensta rt |
|
growing again after z= 2. However, with current uncertain- |
|
ties these results are tenuous. The single most effective wa y |
|
to reduce current uncertainties on both the SM–HM relation |
|
at individualredshiftsandonitsevolutionis to conductmo re |
|
high-redshiftgalaxysurveys,bothtoprobefaintergalaxi esto |
|
determinthe shapeofthe GSMF andto get betterstatistics at |
|
thehighmassend. |
|
6.DISCUSSION AND IMPLICATIONS |
|
Atz∼0, the majority of published results are in accord |
|
within our full systematic error bars, regardless of the tec h- |
|
nique used. All reported results appear to be consistent wit h |
|
the principlesnecessary for abundancematching over a wide |
|
rangeofhalomasses(1011−1015M⊙)—thateachdarkmatter |
|
halo and subhaloabovethe masses we have consideredhosts |
|
a galaxy with a reasonably tight relationship between their |
|
masses, and that average stellar mass — halo mass relation |
|
increasesmonotonicallywith halomass. |
|
Because of the available statistics of halo and galaxy stel- |
|
lar mass functions,especially at z=0, the techniqueof abun- |
|
dancematchingoffersthetightestconstraintsontheSM–HM |
|
relationcurrentlyavailable,anditisinagreementwithre sults |
|
from a broad variety of additional techniques. Under the as- |
|
sumptionthatsystematicerrorsinstellarmasscalculatio nsdo |
|
not change substantially with redshift, abundance matchin g |
|
offers tight constraints on the evolution of the SM–HM rela- |
|
tion from z=1 to the present. These in turn will serve as im- |
|
portant new tests for star formation prescriptionsand reci pes |
|
in both hydrodynamical simulations and semi-analytic mod- |
|
els, as they will applyon the level of individualhalosinste ad |
|
ofonthesimulatedvolumeasa whole. |
|
At the same time, abundance matching offers these con-straints with a minimal number of parameters. The Halo |
|
OccupationDistribution (HOD) technique requiresmodelin g |
|
P(N|Mh), the probabilitydistributionof the numberof galax- |
|
iesperhaloasafunctionofhalomass,inseveraldifferentl u- |
|
minosity bins. In the model proposed in Zhenget al. (2007), |
|
this results in 45 fitted parametersjust to models the occupa - |
|
tionatz=0(fiveparametersfornineluminositybins). Condi- |
|
tional Luminosity Function (CLF) modeling requires param- |
|
eterizing a form for φ(L,Mh), the number density of galaxies |
|
as a functionof luminosityand host halo mass, which results |
|
in approximately a dozen parameters to model occupation at |
|
z=0(Cooray2006). Becauseoftheadditionalconstraintsim- |
|
posedbyassumingthateachhalohostsagalaxy,ourapproach |
|
uses fewer parameters. Abundancematching, as discussed in |
|
this paper, results in a model with only six independent pa- |
|
rameters(fiveto empiricallyfit the derivedSM–HMrelation, |
|
andonetomodelthescatterinobservedstellarmassesatfixe d |
|
halomass) todescribethe populationofgalaxiesinhalos. |
|
Theabundancematchingapproachto the SM–HM relation |
|
requires so few parameters in comparison to other methods |
|
becauseofthefairlysmallscatter( ≈0.16dex)betweenstellar |
|
mass and halo mass at high masses (the scatter has a negligi- |
|
bleimpactonthe averageSM–HMrelationat lowermasses), |
|
and the requirement that satellite galaxies live in satelli te ha- |
|
los(subhalos). Itmaywellbe thatamorecomplicatedmodel |
|
must be adopted for satellites to quantitatively match the |
|
small-scale clustering observations (e.g. Wang etal. 2006 ). |
|
However, such changes will affect the clustering much more |
|
than the derived SM–HM relation, as suggested by the min- |
|
imal changes in Figures 7 and 10 for mass scales ( /lessorsimilar1012.5 |
|
M⊙) wheresatellites are a non-negligiblefractionofthe tota l |
|
halopopulation. |
|
ThelargestuncertaintiesintheSM—HMrelationat z<1 |
|
comefromassumptionsinconvertinggalaxyluminositiesin to |
|
stellar masses, which amount to uncertaintieson the order o f |
|
0.25 dex in the normalization of the relation. However, the |
|
systematicbiasesintroducedbythecombinedsourcesofsca t- |
|
terbetweencalculatedstellarmassesandhalomassescanri se |
|
toequivalentsignificanceforhalosabove1014.5M⊙. Because |
|
the GSMF is monotonicallydecreasing, results which do not |
|
account for all sources of scatter in stellar mass will over- |
|
predictthe average stellar mass in halos by 0.17-0.25dex fo r |
|
thesemassivehalos. |
|
Using abundance matching to find confidence intervals for |
|
the SM–HM relation is an even more involved process, as |
|
each of the ways in which the systematics might vary must |
|
also be taken into account. While future work on constrain- |
|
ing stellar masses will be the most valuable in terms of re- |
|
ducing uncertainties for the lowest redshift data, wider an d |
|
deeper surveys and some resolution to the discrepancy be- |
|
tween high-redshift cosmic star formationdensity and stel lar |
|
massfunctionsmust occurin orderto improveconstraintson |
|
therelationat highredshifts. |
|
Asmentionedintheintroduction,abundancematchingmay |
|
be used equallywell to assign galaxyluminositiesand color s |
|
to halos. In this case, the galaxy luminosity — halo mass |
|
relation may be derived using identical methodology to that |
|
presentedin§3,withtheexceptionthatthesystematics µand |
|
κmaybeneglected,leavingonly σ(z)(effectively,theredshift |
|
scalingof photometryerrors)and ξ(effectively,the scatter in |
|
luminosityatfixedhalomass). Asthesesystematicsaremuch |
|
betterconstrainedthantheirstellarmasscounterparts(s imply |
|
as luminosities may be measured directly),this approachca n22 BEHROOZI,CONROY & WECHSLER |
|
yield very powerful constraints on the normalization as wel l |
|
as the evolution of the luminosity–mass relation. The highe r |
|
accuracy possible compared to the stellar mass–mass rela- |
|
tion will generally notremove uncertainties in comparing to |
|
galaxyformationmodels. Galaxyformationcodeswhichcal- |
|
culate luminosities must include modeling for all the effec ts |
|
in §2.1.1, meaning that constraintson the underlyingphysi cs |
|
are subject to the same uncertainties. However, tighter con - |
|
straints on the luminosity–mass relation will be nonethele ss |
|
helpful for applicationswhich are concernedwith cosmolog - |
|
icalconstraintsfromlargeluminosity-selectedsurveys. |
|
7.CONCLUSIONS |
|
We have performed an extensive exploration of the uncer- |
|
taintiesrelevantto determiningthe relationshipbetween dark |
|
matter halos and galaxy stellar masses from the halo abun- |
|
dancematchingtechnique. Errorsrelatedtotheobservedst el- |
|
lar mass function, the theoretical halo mass function, and t he |
|
underlying technique of abundance matching are all consid- |
|
ered. We focus on the mean stellar mass to halo mass ratio |
|
forcentralgalaxiesasafunctionofhalomass,andpresentr e- |
|
sultsforthisrelationshipatthepresentepochandextendi ngto |
|
z∼4. Weaccountseparatelyforstatistical errorsandforsys- |
|
tematic errors resulting from uncertainties in stellar mas s es- |
|
timation, and also investigatethe relative contributiono f var- |
|
ious sources of error including cosmological uncertainty a nd |
|
the scatter between stellar mass and halo mass. An analytic |
|
modelhasbeendevelopedwhichcanbeusedtoconstrainthis |
|
connectionintheabsenceofhighresolutionsimulations. |
|
Ourprimaryconclusionsareasfollows: |
|
1. The peak integrated star formation efficiency occurs at |
|
a halo mass near 1012M⊙, with a relatively low frac- |
|
tion — 20% at z= 0 — of baryons currently locked |
|
up in stars. This peak value declines to z∼2 but re- |
|
mains between10–20%for all redshiftsbetween z=0– |
|
4. Thisimpliesthat30 −40%ofbaryonswereconverted |
|
intostarsoverthelifetimeofagalaxywithcurrenthalo |
|
massof1012M⊙. |
|
2. At low masses, the stellar mass – halo mass relation at |
|
z=0scalesas M∗∼M2.3 |
|
h. Athighmasses,around1014 |
|
M⊙, stellar mass scales as M∗∼M0.29 |
|
h. However, the |
|
highmassscalingmaynotbeapowerlaw,asourmodel |
|
indicates that this slope decreases with increasing halo |
|
mass. |
|
3. Within statistical uncertainties,the stellar mass cont ent |
|
of halos has increased by 0 .3−0.45dex for halos with |
|
mass less than 1012M⊙sincez∼1. Systematic biases |
|
in stellar mass calculations between different redshifts |
|
could broaden the uncertaintiesin this number, but the |
|
conclusion that significant evolution has occurred for |
|
low-mass halos would remain robust. For halos with |
|
mass greater than 1013M⊙, our best-fit results indicate |
|
more growth in halo masses than stellar masses since |
|
z∼1,butareconsistentwithnoevolutioninthestellar |
|
massfractionsoverthistime. |
|
4. Systematic, uniform offsets in the galaxy stellar mass |
|
functionand its evolutionare the dominantuncertainty |
|
in the stellar mass – halo mass relation at low redshift. |
|
Statistical errors in the estimation of individual stellar |
|
masses impact the high mass end of the GSMF, and athigher redshifts may result in an observed GSMF that |
|
deviatesfroma Schechterfunction. |
|
5. Current uncertainties in the underlying cosmological |
|
model are sub-dominant to the systematic errors, but |
|
are larger than other sources of statistical error for ha- |
|
losbelow Mh∼1012M⊙forlowredshifts( z<0.2). |
|
6. Given current constraints from other methods, uncer- |
|
tainty in the value of scatter between stellar mass and |
|
halo mass is important in the mean relation for masses |
|
aboveMh∼1012.5M⊙, although it is subdominant to |
|
systematicerrorsforallmassesbelow Mh∼1014.5M⊙. |
|
7. Other uncertainties in the galaxy–halo assignment, in- |
|
cluding different assumptions about the treatment of |
|
satellite galaxies, are subdominant when considering |
|
themeanrelationforcentralgalaxies. |
|
8. At higher redshifts (1 <z<4), systematic uncertain- |
|
tiesremainimportant,butstatisticaluncertaintiesreac h |
|
equal significance. The shape of the relation is fairly |
|
unconstrained at z>2, where improved statistics and |
|
constraintsonthe GSMFbelow M∗areneeded. |
|
Wehavepresentedabest–fitgalaxystellarmass–halomass |
|
relation including an estimate of the total statistical and sys- |
|
tematic errors using available data from z= 0−4, although |
|
caution should be used at redshifts higher than z∼1. We |
|
also presentan algorithmto generalizethis relationforan ar- |
|
bitrary cosmological model or halo mass function. The fact |
|
that assignment errors are sub-dominant and scatter can be |
|
well–constrained by other means gives increased confidence |
|
inusingthesimpleabundancematchingapproachtoconstrai n |
|
this relation. These results provide a powerful constraint on |
|
modelsofgalaxyformationandevolution. |
|
PSB andRHW receivedsupportfromthe U.S. Department |
|
of Energy under contract number DE-AC02-76SF00515 and |
|
froma TermanFellowship at StanfordUniversity. CC is sup- |
|
ported by the Porter Ogden Jacobus Fellowship at Princeton |
|
University. We thank Michael Blanton, Niv Drory, Raphael |
|
Gavazzi, Qi Guo, Sarah Hansen, Anatoly Klypin, Cheng |
|
Li, Yen-TingLin, Pablo Pérez-González, Danilo Marchesini , |
|
Benjamin Moster, Lan Wang, Xiaohu Yang, Zheng Zheng, |
|
as well as their co-authors for the use of electronic ver- |
|
sions of their data. We appreciate many helpful discus- |
|
sionsandcommentsfromIvanBaldry,MichaelBusha,Simon |
|
Driver,NivDrory,AnatolyKlypin,AriMaller,DaniloMarch - |
|
esini, Phil Marshall, Pablo Pérez-González, Paolo Salucci , |
|
Jeremy Tinker, Frank van den Bosch, the Santa Cruz Galaxy |
|
Workshop, and the anonymous referee for this paper. The |
|
ART simulation (L80G) used here was run by Anatoly |
|
Klypin, and we thank him for allowing us access to these |
|
data. We are grateful to Michael Busha for providing the |
|
halo catalogs we used to estimate sample variance errors. |
|
These simulations were produced by the LasDamas project ( |
|
http://lss.phy.vanderbilt.edu/lasdamas/ ); |
|
we thank the LasDamas collaboration for providing us with |
|
thisdata. |
|
REFERENCES |
|
Ashman,K.M.,Salucci, P.,& Persic, M.1993, MNRAS, 260, 610UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 23 |
|
Baldry, I.K.,Glazebrook, K.,&Driver, S.P.2008, MNRAS,38 8, 945 |
|
Bell, E.F.,McIntosh, D.H.,Katz, N.,&Weinberg, M.D.2003, ApJ, 585, |
|
L117 |
|
Berlind, A.A.,&Weinberg, D.H.2002, ApJ, 575,587 |
|
Berrier, J.C.,Bullock, J.S.,Barton, E.J.,Guenther, H. D. ,Zentner, A.R., |
|
& Wechsler, R. H.2006, ApJ,652, 56 |
|
Blanton, M. R.,&Roweis, S.2007, AJ,133, 734 |
|
Bruzual, G.2007, arXiv:astro-ph/0703052 |
|
Bruzual, G.,&Charlot, S.2003, MNRAS,344, 1000 |
|
Bryan, G. L.,&Norman, M.L.1998, ApJ,495, 80 |
|
Bullock, J.S.,Wechsler,R.H.,&Somerville, R.S.2002,MNR AS,329,246 |
|
Bundy, K.,et al. 2006, ApJ,651, 120 |
|
Calzetti, D.,Armus,L.,Bohlin, R.C., Kinney, A.L.,Koornn eef, J.,& |
|
Storchi-Bergmann, T.2000, ApJ,533, 682 |
|
Cappellari, M.,etal. 2006, MNRAS, 366, 1126 |
|
Cattaneo, A.,Dekel, A.,Faber, S.M.,& Guiderdoni, B. 2008, MNRAS, |
|
389, 567 |
|
Chabrier, G.2003, Publications of the Astronomical Societ y of thePacific, |
|
115, 763 |
|
Charlot, S.1996, in Astronomical Society of thePacific Conf erence Series, |
|
Vol. 98,From Stars to Galaxies: the Impact of Stellar Physic s on Galaxy |
|
Evolution, 275 |
|
Charlot, S.,&Fall, S.M.2000, ApJ, 539,718 |
|
Charlot, S.,Worthey, G.,&Bressan, A.1996, ApJ,457, 625 |
|
Cole, S.,et al. 2001, MNRAS,326, 255 |
|
Colín, P.,Klypin, A.A.,Kravtsov, A.V.,& Khokhlov, A.M.19 99, ApJ, |
|
523, 32 |
|
Conroy, C.,Gunn, J.E.,&White, M.2009, ApJ,699, 486 |
|
Conroy, C.,etal. 2007, ApJ,654, 153 |
|
Conroy, C.,&Wechsler, R.H.2009, ApJ, 696,620 |
|
Conroy, C.,Wechsler, R. H.,&Kravtsov, A.V. 2006, ApJ,647, 201 |
|
Conroy, C.,White, M.,&Gunn, J.E.2010, ApJ,708, 58 |
|
Cooray, A.2006, MNRAS,365, 842 |
|
Cooray, A.,& Sheth, R. 2002, Phys.Rep., 372,1 |
|
Crocce, M.,Fosalba, P.,Castander, F.J.,& Gaztanaga, E.20 09, |
|
arXiv:0907.0019 [astro-ph] |
|
Davé, R.2008, MNRAS, 385, 147 |
|
Dressler, A. 1980, ApJ,236, 351 |
|
Driver, S.P.,Popescu, C.C.,Tuffs, R.J.,Liske, J.,Graham , A.W.,Allen, |
|
P.D.,&dePropris, R. 2007, MNRAS,379, 1022 |
|
Drory, N.,et al. 2009, arXiv:0910.5720 [astro-ph] |
|
Dunkley, J.,Bucher, M.,Ferreira, P.G.,Moodley, K.,&Skor dis, C.2005, |
|
MNRAS, 356,925 |
|
Eddington, Sir, A.S.1940, MNRAS, 100,354 |
|
Gavazzi, R.,Treu,T.,Rhodes, J.D.,Koopmans,L.V. E.,Bolt on, A.S., |
|
Burles, S.,Massey, R.J.,&Moustakas, L.A.2007, ApJ,667, 1 76 |
|
Guo,Q.,White, S.,Li, C.,&Boylan-Kolchin, M. 2009, arXiv: 0909.4305 |
|
[astro-ph] |
|
Guzik, J.,&Seljak, U.2002, MNRAS,335, 311 |
|
Hansen, S.M.,Sheldon, E.S.,Wechsler, R. H.,&Koester, B. P .2009, ApJ, |
|
699, 1333 |
|
Hilbert, S.,White, S. D.M.,Hartlap, J.,&Schneider, P.200 7, MNRAS, |
|
382, 121 |
|
Hopkins, A.M.,&Beacom, J.F.2006, ApJ,651, 142 |
|
Hopkins, A.M.,&Beacom, J.F.2006, ApJ,651, 142 |
|
Jenkins, A.,et al. 2001, MNRAS,321, 372 |
|
Kajisawa, M.,et al. 2009, ApJ,702, 1393 |
|
Kannappan, S.J.,& Gawiser, E.2007, ApJ,657, L5 |
|
Kauffmann, G.,etal. 2003, MNRAS, 341, 33 |
|
Kewley, L.J.,Jansen, R. A.,& Geller, M.J.2005, PASP,117, 2 27 |
|
Klypin, A.,Gottlöber, S.,Kravtsov, A.V., &Khokhlov, A.M. 1999, ApJ, |
|
516, 530 |
|
Klypin, A.,Trujillo-Gomez, S.,&Primack, J.2010, ArXiv e- prints |
|
Klypin, A.,et al. 2009, ApJ,in preparation |
|
Komatsu, E.,et al. 2009, ApJS,180, 330 |
|
Kravtsov, A.,&Klypin, A.1999, ApJ,520, 437 |
|
Kravtsov, A.V.,Berlind, A.A.,Wechsler, R.H.,Klypin, A.A .,Gottloeber, |
|
S.,Allgood, B.,&Primack, J.R.2004, ApJ, 609, 35 |
|
Kravtsov, A.V., Gnedin, O.Y., &Klypin, A.A.2004, ApJ,609, 482 |
|
Kravtsov, A.V.,Klypin, A.A.,&Khokhlov, A.M.1997, ApJ,11 1, 73 |
|
Lagattuta, D.J.,et al. 2009, arXiv:0911.2236 [astro-ph] |
|
LeBorgne, D.,Rocca-Volmerange, B.,Prugniel, P.,Lançon, A.,Fioc, M.,& |
|
Soubiran, C. 2004, A&A,425,881 |
|
Lee, H.-c.,Worthey, G.,Trager, S.C.,&Faber, S. M.2007, Ap J,664, 215 |
|
Lee, S.,Idzi, R.,Ferguson, H.C.,Somerville, R. S.,Wiklin d, T.,& |
|
Giavalisco, M.2009, ApJS,184, 100 |
|
Leitherer, C., etal. 1999, ApJS,123, 3 |
|
Li,C.,Jing, Y. P.,Kauffmann, G.,Börner, G.,Kang, X.,&Wan g, L.2007, |
|
MNRAS, 376,984Li,C.,&White, S.D.M.2009, MNRAS, 398, 2177 |
|
Lin,Y.-T.,&Mohr, J.J.2004, ApJ,617, 879 |
|
Lucatello, S.,Gratton, R.G.,Beers, T.C.,&Carretta, E.20 05, ApJ, 625, |
|
833 |
|
Mandelbaum, R.,Seljak, U.,Kauffmann, G.,Hirata, C. M.,&B rinkmann, J. |
|
2006, MNRAS,368, 715 |
|
Maraston, C.2005, MNRAS, 362,799 |
|
Marchesini, D.,van Dokkum, P.G.,Förster Schreiber, N.M., Franx, M., |
|
Labbé, I.,&Wuyts, S.2009, ApJ,701, 1765 |
|
Marín, F.A.,Wechsler, R. H.,Frieman, J.A.,&Nichol, R. C.2 008, ApJ, |
|
672, 849 |
|
Meneux, B., etal. 2008, A&A,478, 299 |
|
—.2009, A&A,505, 463 |
|
More, S.,van den Bosch, F.C.,Cacciato, M.,Mo, H.J.,Yang, X .,&Li,R. |
|
2009, MNRAS,392, 801 |
|
Moster, B.P.,Somerville, R.S.,Maulbetsch, C.,van den Bos ch, F.C., |
|
Maccio’, A.V.,Naab, T.,&Oser, L.2009, arXiv:0903.4682 [a stro-ph] |
|
Muzzin, A.,Marchesini, D.,van Dokkum, P.G.,Labbé, I.,Kri ek, M.,& |
|
Franx, M.2009, ApJ, 701, 1839 |
|
Nagai, D.,&Kravtsov, A. V.2005, ApJ,618, 557 |
|
Nagamine, K.,Ostriker, J.P.,Fukugita, M.,& Cen, R.2006, T he |
|
Astrophysical Journal, 653, 881 |
|
Nagamine, K.,Ostriker, J.P.,Fukugita, M.,&Cen, R.2006, A pJ,653, 881 |
|
Neyrinck, M.C.,Hamilton, A. J.S.,& Gnedin, N. Y.2004, MNRA S, 348,1 |
|
Panter, B.,Heavens, A.,& Jimenez, R. 2004, MNRAS,355, 764 |
|
Panter, B.,Jimenez, R.,Heavens, A. F.,&Charlot, S.2007, M NRAS,488 |
|
Percival, S.M.,&Salaris, M. 2009, ApJ,703, 1123 |
|
Pérez-González, P.G.,etal. 2005, ApJ,630, 82 |
|
—.2008, ApJ,675, 234 |
|
Postman, M.,& Geller, M.J.1984, ApJ,281, 95 |
|
Pozzetti, L.,et al. 2007, A&A,474, 443 |
|
Prada, F.,et al. 2003, ApJ,598, 260 |
|
Press,W.H.,&Schechter, P.1974, ApJ,187, 425 |
|
Reddy, N.A.,&Steidel, C. C.2009, ApJ,692, 778 |
|
Salimbeni, S.,Fontana, A.,Giallongo, E.,Grazian, A.,Men ci, N., |
|
Pentericci, L.,&Santini, P.2009, in American Institute of Physics |
|
Conference Series, Vol. 1111, American Institute of Physic s Conference |
|
Series, ed.G. Giobbi, A.Tornambe, G. Raimondo, M. Limongi, |
|
L.A.Antonelli, N.Menci, &E.Brocato, 207–211 |
|
Salpeter, E.E.1955, ApJ,121, 161 |
|
Shankar, F.,Lapi, A.,Salucci, P.,DeZotti, G.,&Danese, L. 2006, ApJ,643, |
|
14 |
|
Sheldon, E.S.,et al. 2004, AJ,127, 2544 |
|
Spergel, D.N.,et al. 2003, ApJS,148, 175 |
|
Springel, V.2005, MNRAS,364, 1105 |
|
Stanek, R.,Rudd, D.,&Evrard, A.E.2009, MNRAS,394, L11 |
|
Tasitsiomi, A.,Kravtsov, A.V.,Wechsler, R. H.,& Primack, J.R. 2004, |
|
ApJ,614, 533 |
|
Tinker, J.,Kravtsov, A.V.,Klypin, A.,Abazajian, K.,Warr en, M.,Yepes, |
|
G.,Gottlöber, S.,& Holz, D.E.2008, ApJ,688, 709 |
|
Tinker, J.L.,Weinberg, D.H.,Zheng, Z.,&Zehavi, I.2005, A pJ,631, 41 |
|
Tinsley, B.M.,&Gunn, J.E.1976, ApJ,203, 52 |
|
Tumlinson, J.2007a, ApJ,665, 1361 |
|
—.2007b, ApJ, 664, L63 |
|
Vale, A.,&Ostriker, J.P.2004, MNRAS,353, 189 |
|
—.2006, MNRAS, 371,1173 |
|
van den Bosch, F.C.,Norberg, P.,Mo,H.J.,&Yang, X.2004, MN RAS, |
|
352, 1302 |
|
van der Wel,A.,Franx, M.,Wuyts,S.,van Dokkum, P.G.,Huang , J.,Rix, |
|
H.-W.,&Illingworth, G.D.2006, ApJ,652, 97 |
|
van Dokkum, P.G.2008, ApJ,674, 29 |
|
Wang,L.,& Jing, Y.P.2009, arXiv:0911.1864 [astro-ph] |
|
Wang,L.,Li, C.,Kauffmann, G.,&deLucia, G.2006, MNRAS,37 1, 537 |
|
Warren, M.S.,Abazajian, K.,Holz, D.E.,&Teodoro, L.2006, ApJ, 646, |
|
881 |
|
Weinberg, D.H.,Colombi, S.,Davé, R.,&Katz, N.2008, ApJ,6 78, 6 |
|
Weinberg, D.H.,Davé, R.,Katz, N.,&Hernquist, L.2004, ApJ ,601, 1 |
|
Wetzel, A.R.,&White, M.2009, arXiv:0907.0702 [astro-ph] |
|
Wilkins, S. M.,Trentham, N.,& Hopkins, A.M.2008a, MNRAS,3 85, 687 |
|
—.2008b, MNRAS, 385, 687 |
|
Yang, X.,Mo,H.J.,&van den Bosch, F.C.2009a, ApJ,695, 900 |
|
—.2009b, ApJ, 693, 830 |
|
Yang, X.,Mo,H.J.,van den Bosch, F.C.,Pasquali, A.,Li,C., &Barden, M. |
|
2007, ApJ,671, 153 |
|
Yang, X.,etal. 2003, MNRAS,339, 1057 |
|
Yi, S.K.2003, ApJ,582, 202 |
|
York,D.G.,etal. 2000, AJ,120, 1579 |
|
Zaritsky, D.,&White, S.D.M.1994, ApJ, 435,599 |
|
Zheng,Z.,Coil, A.L.,&Zehavi, I.2007, ApJ,667, 76024 BEHROOZI,CONROY & WECHSLER |
|
APPENDIX |
|
CONVERTING RESULTS TO OTHER HALO MASS FUNCTIONS |
|
FromEquation14,itispossibletosimplyconvertfromourha lomassfunction φhtoanyhalomassfunctionofchoice( φh,r). In |
|
particular,the function Mh(M∗) is defined by the fact that the numberdensity of halos with ma ss aboveMh(M∗) must match the |
|
numberdensityofgalaxieswithstellarmassabove M∗(withtheappropriatedeconvolutionstepsapplied). Recal lfromEquation |
|
14that |
|
/integraldisplay∞ |
|
Mh(M∗)φh(M)dlog10M=/integraldisplay∞ |
|
M∗φdirect(M∗)dlog10M∗. (A1) |
|
Naturally,thecorrectmass-stellarmassrelationforthea lternatehalomassfunction φh,r(whichwewilllabelas Mh,r(M∗))must |
|
satisfythissameequation,withtheresult that: |
|
/integraldisplay∞ |
|
Mh(M∗)φh(M)dlog10M=/integraldisplay∞ |
|
Mh,r(M∗)φh,r(M)dlog10M. (A2) |
|
Tomakethecalculationevenmoreexplicit,let Φh(M)=/integraltext∞ |
|
Mφhdlog10Mbeourcumulativehalomassfunction,andlet Φh,r(M) |
|
bethecorrespondingcumulativehalomassfunctionfor φh,r. Then,we find: |
|
Mh,r(M∗)=Φ−1 |
|
h,r(Φh(Mh(M∗))). (A3) |
|
Massfunctionsfromdifferentcosmologiesthanthose assum edin thispaperwill alsorequireconvertingstellar masses if their |
|
choicesof hdifferfromtheWMAP5 best-fitvalue. |
|
EFFECTS OF SCATTER ON THE STELLAR MASS FUNCTION |
|
Thissectionisintendedtoprovidebasicintuitionforthee ffectsofboth ξandσ(z),whichmaybemodeledasconvolutions. The |
|
classic examplein this case is convolutionof the GSMF with a log-normaldistributionof some width ω. While the convolution |
|
(evenofa Schechterfunction)with a Gaussian hasno knownan alyticalsolution, we may approximatethe result byconside ring |
|
the case where the logarithmic slope of the GSMF changes very little over the width of the Gaussian. Then, locally, the ste llar |
|
mass function is proportional to a power function, say φ(M∗)∝(M∗)α. Then, if we let x= log10M∗(so thatφ(10x)∝10αx), |
|
findingtheconvolutionisequivalenttocalculatingthefol lowingintegral: |
|
φconv(10x)∝/integraldisplay∞ |
|
−∞10αb |
|
√ |
|
2πω2exp/parenleftbigg |
|
−(x−b)2 |
|
2ω2/parenrightbigg |
|
db |
|
= 10αx101 |
|
2α2ω2ln(10). (B1) |
|
That is to say, the stellar mass function is shifted upward by approximately1 .15(αω)2dex. Hence, for parts of the stellar mass |
|
functionwith shallow slopes, the shift is completely insig nificant, as it is proportionalto α2. However,it matters much more in |
|
thesteeperpartofthestellarmassfunction,tothepointth atforgalaxiesofmass1012M⊙,theobservedstellarmassfunctioncan |
|
beseveralordersofmagnitudeabovethe intrinsicGSMF. |
|
A SAMPLE CALCULATION OF THE FUNCTIONAL FORM OF THE STELLAR MA SS FUNCTION |
|
Galaxy formation models typically assume at least two feedb ack mechanisms to limit star formation for low-mass galaxie s |
|
and for high-mass galaxies. Thus, one of the simplest fiducia l star formation rate (SFR) as a function of halo mass ( Mh) would |
|
assumea doublepower-lawform: |
|
SFR(Mh)∝/parenleftbiggMh |
|
M0/parenrightbigga |
|
+/parenleftbiggMh |
|
M0/parenrightbiggb |
|
. (C1) |
|
We mightexpectthe total stellar massas a functionofhaloma ssto take a similar form,exceptperhapswith a wider regiono f |
|
transitionbetween galaxieswhose historiesare predomina ntlylow mass, and those with historieswhich are predominan tlyhigh |
|
mass, for the reason that some galaxies’ accretion historie s may have caused them to be affected comparably by both feedb ack |
|
mechanisms. |
|
Hence, assuming that the relation between halo mass and stel lar mass follows a double power-law form, we adopt a simple |
|
functionalformto convertfromthestellar massofagalaxyt othehalomass: |
|
Mh(M∗)=M1/bracketleftBigg/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ/γ |
|
+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/γ/bracketrightBiggγ |
|
. (C2) |
|
Here,βmaybethoughtofasthefaint-endslope, δasthemassive-endslope(although βandδarefunctionallyinterchangeable), |
|
andγasthetransitionwidth(larger γmeansa slowertransitionbetweenthe massiveandfaint-end slopes). |
|
We first calculatedlog(Mh) |
|
dlog(M∗):UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 25 |
|
log(Mh)=log(M1)+γlog/bracketleftBigg/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ/γ |
|
+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/γ/bracketrightBigg |
|
, (C3) |
|
dlog(Mh) |
|
dlog(M∗)=dlog(Mh) |
|
dM∗dM∗ |
|
dlog(M∗)(C4) |
|
=M∗ln(10)dlog(Mh) |
|
dM∗(C5) |
|
=β/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigβ/γ |
|
+δ/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigδ/γ |
|
/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigβ/γ |
|
+/parenleftBig |
|
M∗ |
|
M∗,0/parenrightBigδ/γ(C6) |
|
=β+(δ−β)/parenleftBigg |
|
1+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ−δ |
|
γ/parenrightBigg−1 |
|
. (C7) |
|
This justifies the earlier intuition that the functional for m forMh(M∗) transitions between slopes of βandδwith a width that |
|
increases with γ. Note thatdlog(Mh) |
|
dlog(M∗)is always of order one, as the stellar mass is always assumed t o increase with the halo mass |
|
andvice versa(namely, β >0andδ >0). |
|
Next,we approachdN |
|
dlogMh. Fromanalyticalresults, weexpectaSchechterfunctionfo rthehalomassfunction,namely: |
|
dN |
|
dlog(Mh)=φ0ln(10)/parenleftbiggMh |
|
M0/parenrightbigg1−α |
|
exp/parenleftbigg |
|
−Mh |
|
M0/parenrightbigg |
|
. (C8) |
|
Substitutinginthe equationfor Mh(M∗),we have |
|
dN |
|
dlog(Mh)=φ0ln(10)/bracketleftBigg/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ/γ |
|
+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/γ/bracketrightBiggγ(1−α) |
|
×/parenleftbiggMh |
|
M0/parenrightbigg1−α |
|
exp/parenleftBigg |
|
−M1 |
|
M0/bracketleftBigg/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ/γ |
|
+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/γ/bracketrightBiggγ/parenrightBigg |
|
. (C9) |
|
Already evident is the generic result that there will be sepa rate faint-end and massive-end slopes in the stellar mass fu nction, |
|
and that the falloff is not generically specified by an expone ntial. We may make one simplification in this model—namely, t o |
|
note that Mh(M∗,0) correspondsto the halo mass at which the slope of Mh(M∗) begins to transition from βtoδ. We expect this |
|
transition to correspondto the transition between superno vafeedbackand AGN feedbackin semi-analyticmodels—namel y,for |
|
a halo mass which is too large to be affectedmuch by supernova feedback,but which is yet too small to host a large AGN. This |
|
implies that Mh(M∗,0) is expected to be around 1012M⊙or less, meaning that Mh/M0is small until stellar masses well beyond |
|
M∗,0, meaning that we may neglect the faint-end slope of the Mh(M∗) relation in the exponential portion of the stellar mass |
|
function: |
|
dN |
|
dlog(Mh)=φ0ln(10)/parenleftbiggM1 |
|
M0/parenrightbigg1−α/bracketleftBigg/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ/γ |
|
+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/γ/bracketrightBiggγ(1−α) |
|
×exp/parenleftBigg |
|
−M1 |
|
M0/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/parenrightBigg |
|
. (C10) |
|
Hence,we maycombinethese twoequationstoobtaintheexpre ssionforthestellar massfunction: |
|
dN |
|
dlog(M∗)=φ0ln(10)/parenleftbiggM1 |
|
M0/parenrightbigg1−α/bracketleftBigg/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ/γ |
|
+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/γ/bracketrightBiggγ(1−α) |
|
×exp/parenleftBigg |
|
−M1 |
|
M0/parenleftbiggM∗ |
|
M∗,0/parenrightbiggδ/parenrightBigg |
|
× |
|
β+(δ−β)/parenleftBigg |
|
1+/parenleftbiggM∗ |
|
M∗,0/parenrightbiggβ−δ |
|
γ/parenrightBigg−1 |
|
. (C11)26 BEHROOZI,CONROY & WECHSLER |
|
Whilethisseemscomplicated,it maybeintuitivelydeconst ructedas: |
|
dN |
|
dlog(M∗)=[constant]/bracketleftbig |
|
doublepowerlaw/bracketrightbig |
|
×/bracketleftbig |
|
exponentialdropoff/bracketrightbig |
|
O(1). (C12) |
|
As mentioned previously, this functional form is equivalen t toφdirect. To convert to the true stellar mass function φtrueor the |
|
observed stellar mass function φmeas, it must be convolved with the scatter in stellar mass at fixed halo mass and (for φmeas) |
|
the scatter in calculated stellar mass at fixed true stellar m ass. As such, it should be clear that—while the final form may b e |
|
Schechter– like—there is certainly much more flexibility in the final shape of the GSMF than a Schechter function alone would |
|
allow,asevidencedbythefiveparametersrequiredtofullys pecifyequationC11. |
|
DATA TABLES |
|
WereproduceherelistingsofthedatapointsinFigures5,6, and13inTables3,4,and5,respectively. Seesections4.2an d5.2 |
|
fordetailsonthedatapointsineachtable. |
|
Table3 |
|
Stellar Mass Fractions For0 <z<1 Including Full Systematics |
|
z=0.1 z=0.5 z=1.0 |
|
log10(Mh) log10(M∗/Mh) log10(M∗/Mh) log10(M∗/Mh) |
|
11.00 −2.30+0.26 |
|
−0.23 |
|
11.25 −1.96+0.25 |
|
−0.23−2.11+0.22 |
|
−0.26 |
|
11.50 −1.67+0.24 |
|
−0.24−1.84+0.22 |
|
−0.26−2.01+0.25 |
|
−0.24 |
|
11.75 −1.53+0.23 |
|
−0.24−1.70+0.24 |
|
−0.24−1.85+0.26 |
|
−0.23 |
|
12.00 −1.54+0.24 |
|
−0.24−1.68+0.26 |
|
−0.23−1.77+0.26 |
|
−0.23 |
|
12.25 −1.62+0.24 |
|
−0.24−1.72+0.26 |
|
−0.23−1.77+0.25 |
|
−0.23 |
|
12.50 −1.74+0.24 |
|
−0.24−1.81+0.25 |
|
−0.23−1.81+0.24 |
|
−0.24 |
|
12.75 −1.87+0.23 |
|
−0.25−1.92+0.25 |
|
−0.23−1.89+0.23 |
|
−0.26 |
|
13.00 −2.02+0.23 |
|
−0.25−2.05+0.24 |
|
−0.24−1.99+0.22 |
|
−0.27 |
|
13.25 −2.18+0.22 |
|
−0.26−2.19+0.24 |
|
−0.25−2.11+0.21 |
|
−0.28 |
|
13.50 −2.35+0.22 |
|
−0.26−2.34+0.23 |
|
−0.25−2.25+0.21 |
|
−0.29 |
|
13.75 −2.52+0.22 |
|
−0.27−2.51+0.23 |
|
−0.26−2.39+0.21 |
|
−0.30 |
|
14.00 −2.70+0.21 |
|
−0.28−2.68+0.23 |
|
−0.26−2.55+0.22 |
|
−0.30 |
|
14.25 −2.88+0.21 |
|
−0.28−2.86+0.23 |
|
−0.26 |
|
14.50 −3.07+0.20 |
|
−0.29−3.04+0.23 |
|
−0.27 |
|
14.75 −3.26+0.20 |
|
−0.30 |
|
15.00 −3.45+0.20 |
|
−0.30 |
|
Note. — Halo massesare in units of M⊙. Constraints are quoted over themass range probed by the obs erved GSMF.UncertaintiesAffectingtheStellar Mass–HaloMassRelati on 27 |
|
Table4 |
|
Stellar Mass Fractions without Systematic Errors ( µ=κ=0) |
|
z=0.1 z=0.5 z=1.0 |
|
log10(Mh) log10(M∗/Mh) log10(M∗/Mh) log10(M∗/Mh) |
|
11.00 −2.30+0.03 |
|
−0.02 |
|
11.25 −1.96+0.04 |
|
−0.01−2.10+0.04 |
|
−0.08 |
|
11.50 −1.67+0.03 |
|
−0.01−1.83+0.05 |
|
−0.06−2.02+0.10 |
|
−0.06 |
|
11.75 −1.53+0.01 |
|
−0.01−1.71+0.06 |
|
−0.03−1.85+0.10 |
|
−0.04 |
|
12.00 −1.54+0.01 |
|
−0.02−1.68+0.06 |
|
−0.02−1.78+0.09 |
|
−0.03 |
|
12.25 −1.62+0.00 |
|
−0.02−1.72+0.06 |
|
−0.01−1.77+0.08 |
|
−0.03 |
|
12.50 −1.74+0.01 |
|
−0.02−1.81+0.05 |
|
−0.02−1.81+0.06 |
|
−0.04 |
|
12.75 −1.87+0.01 |
|
−0.03−1.92+0.05 |
|
−0.02−1.88+0.04 |
|
−0.06 |
|
13.00 −2.02+0.01 |
|
−0.03−2.05+0.04 |
|
−0.03−1.98+0.03 |
|
−0.08 |
|
13.25 −2.18+0.02 |
|
−0.04−2.19+0.04 |
|
−0.04−2.10+0.04 |
|
−0.10 |
|
13.50 −2.35+0.02 |
|
−0.05−2.34+0.04 |
|
−0.05−2.24+0.04 |
|
−0.13 |
|
13.75 −2.52+0.03 |
|
−0.06−2.51+0.05 |
|
−0.06−2.38+0.05 |
|
−0.15 |
|
14.00 −2.70+0.03 |
|
−0.07−2.68+0.05 |
|
−0.07−2.54+0.06 |
|
−0.17 |
|
14.25 −2.88+0.04 |
|
−0.08−2.85+0.06 |
|
−0.08 |
|
14.50 −3.07+0.04 |
|
−0.09−3.04+0.06 |
|
−0.10 |
|
14.75 −3.25+0.05 |
|
−0.10 |
|
15.00 −3.45+0.05 |
|
−0.11 |
|
Note. — Halo massesare in units of M⊙. |
|
Table5 |
|
Stellar Mass Fractions For 0 .8<z<4 Including Full Systematics |
|
z=1.0 z=2.0 z=3.0 z=4.0 |
|
log10(Mh) log10(M∗/Mh) log10(M∗/Mh) log10(M∗/Mh) log10(M∗/Mh) |
|
11.50 −2.01+0.25 |
|
−0.24 |
|
11.75 −1.85+0.26 |
|
−0.23 |
|
12.00 −1.77+0.26 |
|
−0.23−1.89+0.22 |
|
−0.27−1.89+0.25 |
|
−0.27 |
|
12.25 −1.77+0.25 |
|
−0.23−1.76+0.24 |
|
−0.25−1.67+0.21 |
|
−0.29−1.58+0.22 |
|
−0.32 |
|
12.50 −1.81+0.24 |
|
−0.24−1.78+0.23 |
|
−0.26−1.63+0.21 |
|
−0.30−1.50+0.20 |
|
−0.35 |
|
12.75 −1.89+0.23 |
|
−0.26−1.87+0.20 |
|
−0.30−1.71+0.19 |
|
−0.35−1.56+0.19 |
|
−0.40 |
|
13.00 −1.99+0.22 |
|
−0.27−2.00+0.17 |
|
−0.35−1.83+0.17 |
|
−0.39−1.68+0.19 |
|
−0.44 |
|
13.25 −2.11+0.21 |
|
−0.28−2.14+0.15 |
|
−0.39−1.97+0.16 |
|
−0.44−1.82+0.19 |
|
−0.49 |
|
13.50 −2.25+0.21 |
|
−0.29−2.30+0.15 |
|
−0.42−2.13+0.17 |
|
−0.47−1.98+0.19 |
|
−0.52 |
|
13.75 −2.39+0.21 |
|
−0.30−2.47+0.17 |
|
−0.45−2.30+0.19 |
|
−0.49 |
|
14.00 −2.55+0.22 |
|
−0.30−2.64+0.20 |
|
−0.47 |
|
Note. — Halo massesare in units of M⊙. |