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title: chrF
emoji: 🤗
colorFrom: blue
colorTo: red
sdk: gradio
sdk_version: 3.0.2
app_file: app.py
pinned: false
tags:
- evaluate
- metric
description: >-
ChrF and ChrF++ are two MT evaluation metrics. They both use the F-score
statistic for character n-gram matches,
and ChrF++ adds word n-grams as well which correlates more strongly with
direct assessment. We use the implementation
that is already present in sacrebleu.
The implementation here is slightly different from sacrebleu in terms of the
required input format. The length of
the references and hypotheses lists need to be the same, so you may need to
transpose your references compared to
sacrebleu's required input format. See
https://github.com/huggingface/datasets/issues/3154#issuecomment-950746534
See the README.md file at https://github.com/mjpost/sacreBLEU#chrf--chrf for
more information.
Metric Card for chrF(++)
Metric Description
ChrF and ChrF++ are two MT evaluation metrics that use the F-score statistic for character n-gram matches. ChrF++ additionally includes word n-grams, which correlate more strongly with direct assessment. We use the implementation that is already present in sacrebleu.
While this metric is included in sacreBLEU, the implementation here is slightly different from sacreBLEU in terms of the required input format. Here, the length of the references and hypotheses lists need to be the same, so you may need to transpose your references compared to sacrebleu's required input format. See https://github.com/huggingface/datasets/issues/3154#issuecomment-950746534
See the sacreBLEU README.md for more information.
How to Use
At minimum, this metric requires a list
of predictions and a list
of list
s of references:
>>> prediction = ["The relationship between cats and dogs is not exactly friendly.", "a good bookshop is just a genteel black hole that knows how to read."]
>>> reference = [["The relationship between dogs and cats is not exactly friendly.", ], ["A good bookshop is just a genteel Black Hole that knows how to read."]]
>>> chrf = evaluate.load("chrf")
>>> results = chrf.compute(predictions=prediction, references=reference)
>>> print(results)
{'score': 84.64214891738334, 'char_order': 6, 'word_order': 0, 'beta': 2}
Inputs
predictions
(list
ofstr
): The predicted sentences.references
(list
oflist
ofstr
): The references. There should be one reference sub-list for each prediction sentence.char_order
(int
): Character n-gram order. Defaults to6
.word_order
(int
): Word n-gram order. If equals to 2, the metric is referred to as chrF++. Defaults to0
.beta
(int
): Determine the importance of recall w.r.t precision. Defaults to2
.lowercase
(bool
): IfTrue
, enables case-insensitivity. Defaults toFalse
.whitespace
(bool
): IfTrue
, include whitespaces when extracting character n-grams. Defaults toFalse
.eps_smoothing
(bool
): IfTrue
, applies epsilon smoothing similar to reference chrF++.py, NLTK, and Moses implementations. IfFalse
, takes into account effective match order similar to sacreBLEU < 2.0.0. Defaults toFalse
.
Output Values
The output is a dictionary containing the following fields:
'score'
(float
): The chrF (chrF++) score.'char_order'
(int
): The character n-gram order.'word_order'
(int
): The word n-gram order. If equals to2
, the metric is referred to as chrF++.'beta'
(int
): Determine the importance of recall w.r.t precision.
The output is formatted as below:
{'score': 61.576379378113785, 'char_order': 6, 'word_order': 0, 'beta': 2}
The chrF(++) score can be any value between 0.0
and 100.0
, inclusive.
Values from Popular Papers
Examples
A simple example of calculating chrF:
>>> prediction = ["The relationship between cats and dogs is not exactly friendly.", "a good bookshop is just a genteel black hole that knows how to read."]
>>> reference = [["The relationship between dogs and cats is not exactly friendly.", ], ["A good bookshop is just a genteel Black Hole that knows how to read."]]
>>> chrf = evaluate.load("chrf")
>>> results = chrf.compute(predictions=prediction, references=reference)
>>> print(results)
{'score': 84.64214891738334, 'char_order': 6, 'word_order': 0, 'beta': 2}
The same example, but with the argument word_order=2
, to calculate chrF++ instead of chrF:
>>> prediction = ["The relationship between cats and dogs is not exactly friendly.", "a good bookshop is just a genteel black hole that knows how to read."]
>>> reference = [["The relationship between dogs and cats is not exactly friendly.", ], ["A good bookshop is just a genteel Black Hole that knows how to read."]]
>>> chrf = evaluate.load("chrf")
>>> results = chrf.compute(predictions=prediction,
... references=reference,
... word_order=2)
>>> print(results)
{'score': 82.87263732906315, 'char_order': 6, 'word_order': 2, 'beta': 2}
The same chrF++ example as above, but with lowercase=True
to normalize all case:
>>> prediction = ["The relationship between cats and dogs is not exactly friendly.", "a good bookshop is just a genteel black hole that knows how to read."]
>>> reference = [["The relationship between dogs and cats is not exactly friendly.", ], ["A good bookshop is just a genteel Black Hole that knows how to read."]]
>>> chrf = evaluate.load("chrf")
>>> results = chrf.compute(predictions=prediction,
... references=reference,
... word_order=2,
... lowercase=True)
>>> print(results)
{'score': 92.12853119829202, 'char_order': 6, 'word_order': 2, 'beta': 2}
Limitations and Bias
- According to Popović 2017, chrF+ (where
word_order=1
) and chrF++ (whereword_order=2
) produce scores that correlate better with human judgements than chrF (whereword_order=0
) does.
Citation
@inproceedings{popovic-2015-chrf,
title = "chr{F}: character n-gram {F}-score for automatic {MT} evaluation",
author = "Popovi{\'c}, Maja",
booktitle = "Proceedings of the Tenth Workshop on Statistical Machine Translation",
month = sep,
year = "2015",
address = "Lisbon, Portugal",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/W15-3049",
doi = "10.18653/v1/W15-3049",
pages = "392--395",
}
@inproceedings{popovic-2017-chrf,
title = "chr{F}++: words helping character n-grams",
author = "Popovi{\'c}, Maja",
booktitle = "Proceedings of the Second Conference on Machine Translation",
month = sep,
year = "2017",
address = "Copenhagen, Denmark",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/W17-4770",
doi = "10.18653/v1/W17-4770",
pages = "612--618",
}
@inproceedings{post-2018-call,
title = "A Call for Clarity in Reporting {BLEU} Scores",
author = "Post, Matt",
booktitle = "Proceedings of the Third Conference on Machine Translation: Research Papers",
month = oct,
year = "2018",
address = "Belgium, Brussels",
publisher = "Association for Computational Linguistics",
url = "https://www.aclweb.org/anthology/W18-6319",
pages = "186--191",
}
Further References
- See the sacreBLEU README.md for more information on this implementation.