Datasets:
license: apache-2.0
task_categories:
- question-answering
language:
- en
tags:
- finance
- music
- medical
- food
- academic disciplines
- natural disasters
- software
- synthetic
pretty_name: Using KGs to test knowledge consistency in LLMs
size_categories:
- 10K<n<100K
For background on this dataset, please check https://arxiv.org/abs/2405.20163.
What it is:
Each dataset in this delivery is made up of query clusters that test an aspect of the consistency of the LLM knowledge about a particular domain. All the questions in each cluster are meant to be answered either 'yes' or 'no'. When the answers vary within a cluster, the knowledge is said to be inconsistent. When all the questions in a cluster are answered 'no' when the expected answer is 'yes' (or viceversa), the knowledge is said to be 'incomplete' (i.e., maybe the LLM wasn't trained in that particular domain). It is our experience that incomplete clusters are very few (less than 3%) meaning that the LLMs we have tested know about the domains included here (see below for a list of the individual datasets), as opposed to inconsistent clusters, which can be between 6%-20% of the total clusters.
How it is made:
The questions and clusters are automatically generated from a knowledge graph from seed concepts and properties. In our case, we have used Wikidata, a well known knowledge graph. The result is an RDF/OWL subgraph that can be queried and reasoned over using Semantic Web technology.
Types of query clusters
There are different types of query clusters depending on what aspect of the knowledge graph and its deductive closure they capture:
Edge clusters test a single edge using different questions. For example, to test the edge ('orthopedic pediatric surgeon', IsA, 'orthopedic surgeon), the positive or 'edge_yes' (expected answer is 'yes') cluster is:
"is 'orthopedic pediatric surgeon' a subconcept of 'orthopedic surgeon' ?",
"is 'orthopedic pediatric surgeon' a type of 'orthopedic surgeon' ?",
"is every kind of 'orthopedic pediatric surgeon' also a kind of 'orthopedic surgeon' ?",
"is 'orthopedic pediatric surgeon' a subcategory of 'orthopedic surgeon' ?"
There are also inverse edge clusters (with questions like "is 'orthopedic surgeon' a subconcept of 'orthopedic pediatric surgeon' ?") and negative or 'edge_no' clusters (with questions like "is 'orthopedic pediatric surgeon' a subconcept of 'dermatologist' ?")
Hierarchy clusters measure the consistency of a given path, including n-hop virtual edges (in graph's the deductive closure). For example, the path ('orthopedic surgeon', 'surgeon', 'medical specialist', 'medical occupation') is tested by the cluster below
"is 'orthopedic surgeon' a subconcept of 'surgeon' ?",
"is 'orthopedic surgeon' a type of 'surgeon' ?",
"is every kind of 'orthopedic surgeon' also a kind of 'surgeon' ?",
"is 'orthopedic surgeon' a subcategory of 'surgeon' ?",
"is 'orthopedic surgeon' a subconcept of 'medical specialist' ?",
"is 'orthopedic surgeon' a type of 'medical specialist' ?",
"is every kind of 'orthopedic surgeon' also a kind of 'medical specialist' ?",
"is 'orthopedic surgeon' a subcategory of 'medical specialist' ?",
"is 'orthopedic surgeon' a subconcept of 'medical_occupation' ?",
"is 'orthopedic surgeon' a type of 'medical_occupation' ?",
"is every kind of 'orthopedic surgeon' also a kind of 'medical_occupation' ?",
"is 'orthopedic surgeon' a subcategory of 'medical_occupation' ?"
Property inheritance clusters test the most basic property of conceptualization. If an orthopedic surgeon is a type of surgeon, we expect that all the properties of surgeons, e.g., having to be board certified, having attended medical school or working on the field of surgery, are inherited by orthopedic surgeons. The example below tests the later:
"is 'orthopedic surgeon' a subconcept of 'surgeon' ?",
"is 'orthopedic surgeon' a type of 'surgeon' ?",
"is every kind of 'orthopedic surgeon' also a kind of 'surgeon' ?",
"is 'orthopedic surgeon' a subcategory of 'surgeon' ?",
"is the following statement true? 'orthopedic surgeon works on the field of surgery' ",
"is the following statement true? 'surgeon works on the field of surgery' ",
"is it accurate to say that 'orthopedic surgeon works on the field of surgery'? ",
"is it accurate to say that 'surgeon works on the field of surgery'? "
List of datasets
To show the versatility of our approach, we have constructed similar datasets in the domains below. We test one property inheritance per dataset. The Wikidata main QNode (the node corresponding to the entities) and PNode (the node corresponding to the property) are indicated in parenthesis.
ACADEMIC_DISCIPLINES (https://www.wikidata.org/wiki/Q11862829) ONTOLOGY -- V1 = 443 CLUSTERS, "has use" (https://www.wikidata.org/wiki/Property:P366)
edges_yes = 52
edges_no = 308
edges_inv = 52
hierarchies = 30
property hierarchies = 1
DISHES (https://www.wikidata.org/wiki/Q746549) ONTOLOGY -- V1 = 1220 CLUSTERS, has parts (https://www.wikidata.org/wiki/Property:P527) --> has ingredient
edges_yes = 225
edges_no = 521
edges_inv = 224
hierarchies = 72
property hierarchies = 178
FINANCIAL PRODUCT (https://www.wikidata.org/wiki/Q15809678) ONTOLOGY -- V1: 725 CLUSTERS, "used by" (https://www.wikidata.org/wiki/Property:P1535)
edges_yes = 112
edges_no = 433
edges_inv = 108
hierarchies = 40
property hierarchies = 32
HOME APPLIANCES (https://www.wikidata.org/wiki/Q212920) ONTOLOGY -- V1 = 421 CLUSTERS, "has use" (https://www.wikidata.org/wiki/Property:P366)
edges_yes = 58
edges_no = 261
edges_inv = 58
hierarchies = 31
property hierarchies = 13
MEDICAL SPECIALTIES (https://www.wikidata.org/wiki/Q930752) ONTOLOGY -- V1 = 740 CLUSTERS, "field of occupation" (https://www.wikidata.org/wiki/Property:P425)
edges_yes = 122
edges_no = 386
edges_inv = 114
hierarchies = 55
property hierarchies = 63
MUSIC_GENRES (https://www.wikidata.org/wiki/Q188451) ONTOLOGY -- V1 = 1990 CLUSTERS, "practiced by" (https://www.wikidata.org/wiki/Property:P3095)
edges_yes = 490
edges_no = 807
edges_inv = 488
hierarchies = 212
property hierarchies = 139
NATURAL DISASTERS (https://www.wikidata.org/wiki/Q8065) ONTOLOGY -- V1 = 357 CLUSTERS, "has cause" (https://www.wikidata.org/wiki/Property:P828)
edges_yes = 45
edges_no = 225
edges_inv = 44
hierarchies = 21
property hierarchies = 22
SOFTWARE (https://www.wikidata.org/wiki/Q7397) ONTOLOGY -- V1: 849 CLUSTERS, "studied in" (https://www.wikidata.org/wiki/Property:P7397) is the property
edges_yes = 80
edges_no = 572
edges_inv = 79
hierarchies = 114
property hierarchies = 4