Implementation that fixes rouge_score for arabic. Thanks to UBC-NLP/araT5#4.
pip install git+https://github.com/ARBML/rouge_score_ar
This is a native python implementation of ROUGE, designed to replicate results from the original perl package.
Maintainers may be contacted at [email protected].
ROUGE was originally introduced in the paper:
Lin, Chin-Yew. ROUGE: a Package for Automatic Evaluation of Summaries. In Proceedings of the Workshop on Text Summarization Branches Out (WAS 2004), Barcelona, Spain, July 25 - 26, 2004.
There are ROUGE implementations available for Python, however some are not native python due to their dependency on the perl script, and others provide differing results when compared with the original implementation. This makes it difficult to directly compare with known results.
This package is designed to replicate perl results. It implements:
- ROUGE-N (N-gram) scoring
- ROUGE-L (Longest Common Subsequence) scoring
- Text normalization
- Bootstrap resampling for confidence interval calculation
- Optional Porter stemming to remove plurals and word suffixes such as (ing, ion, ment).
Note that not all options provided by the original perl ROUGE script are supported, but the subset of options that are implemented should replicate the original functionality.
The original ROUGE perl script implemented optional stopword removal (using the -s parameter). However, there were ~600 stopwords used by ROUGE, borrowed from another now defunct package. This word list contained many words that may not be suited to some tasks, such as day and month names and numbers. It also has no clear license for redistribution. Since we are unable to replicate this functionality precisely we do not include stopword removal.
In the ROUGE paper, two flavors of ROUGE are described:
- sentence-level: Compute longest common subsequence (LCS) between two pieces of
text. Newlines are ignored. This is called
rougeL
in this package. - summary-level: Newlines in the text are interpreted as sentence boundaries,
and the LCS is computed between each pair of reference and candidate sentences,
and something called union-LCS is computed. This is called
rougeLsum
in this package. This is the ROUGE-L reported in Get To The Point: Summarization with Pointer-Generator Networks, for example. If your references/candidates do not have newline delimiters, you can use the --split_summaries flag (or optional argument in RougeScorer).
This package compares target files (containing one example per line) with prediction files in the same format. It can be launched as follows (from google-research/):
python -m rouge.rouge \
--target_filepattern=*.targets \
--prediction_filepattern=*.decodes \
--output_filename=scores.csv \
--use_stemmer=true \
--split_summaries=true
pip install -r rouge/requirements.txt
pip install rouge-score
Then in python:
from rouge_score import rouge_scorer
scorer = rouge_scorer.RougeScorer(['rouge1', 'rougeL'], use_stemmer=True)
scores = scorer.score('The quick brown fox jumps over the lazy dog',
'The quick brown dog jumps on the log.')
Licensed under the Apache 2.0 License.
This is not an official Google product.