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Python Implementations of Word Sense Disambiguation (WSD) Technologies.

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pywsd

Python Implementations of Word Sense Disambiguation (WSD) technologies:

  • Lesk algorithms

    • Original Lesk (Lesk, 1986)
    • Adapted/Extended Lesk (Banerjee and Pederson, 2002/2003)
    • Simple Lesk (with definition, example(s) and hyper+hyponyms)
    • Cosine Lesk (use cosines to calculate overlaps instead of using raw counts)
  • Maximizing Similarity (see also, Pedersen et al. (2003))

    • Path similarity (Wu-Palmer, 1994; Leacock and Chodorow, 1998)
    • Information Content (Resnik, 1995; Jiang and Corath, 1997; Lin, 1998)
  • Baselines
    • Random sense
    • First NLTK sense
    • Highest lemma counts

NOTE: PyWSD only supports Python 3 now (pywsd>=1.2.0). If you're using Python 2, the last possible version is pywsd==1.1.7.

Install

pip install -U nltk
python -m nltk.downloader 'popular'
pip install -U pywsd

Usage

$ python
>>> from pywsd.lesk import simple_lesk
>>> sent = 'I went to the bank to deposit my money'
>>> ambiguous = 'bank'
>>> answer = simple_lesk(sent, ambiguous, pos='n')
>>> print answer
Synset('depository_financial_institution.n.01')
>>> print answer.definition()
'a financial institution that accepts deposits and channels the money into lending activities'

For all-words WSD, try:

>>> from pywsd import disambiguate
>>> from pywsd.similarity import max_similarity as maxsim
>>> disambiguate('I went to the bank to deposit my money')
[('I', None), ('went', Synset('run_low.v.01')), ('to', None), ('the', None), ('bank', Synset('depository_financial_institution.n.01')), ('to', None), ('deposit', Synset('deposit.v.02')), ('my', None), ('money', Synset('money.n.03'))]
>>> disambiguate('I went to the bank to deposit my money', algorithm=maxsim, similarity_option='wup', keepLemmas=True)
[('I', 'i', None), ('went', u'go', Synset('sound.v.02')), ('to', 'to', None), ('the', 'the', None), ('bank', 'bank', Synset('bank.n.06')), ('to', 'to', None), ('deposit', 'deposit', Synset('deposit.v.02')), ('my', 'my', None), ('money', 'money', Synset('money.n.01'))]

To read pre-computed signatures per synset:

>>> from pywsd.lesk import cached_signatures
>>> cached_signatures['dog.n.01']['simple']
set([u'canid', u'belgian_griffon', u'breed', u'barker', ... , u'genus', u'newfoundland'])
>>> cached_signatures['dog.n.01']['adapted']
set([u'canid', u'belgian_griffon', u'breed', u'leonberg', ... , u'newfoundland', u'pack'])

>>> from nltk.corpus import wordnet as wn
>>> wn.synsets('dog')[0]
Synset('dog.n.01')
>>> dog = wn.synsets('dog')[0]
>>> dog.name()
u'dog.n.01'
>>> cached_signatures[dog.name()]['simple']
set([u'canid', u'belgian_griffon', u'breed', u'barker', ... , u'genus', u'newfoundland'])

Cite

To cite pywsd:

Liling Tan. 2014. Pywsd: Python Implementations of Word Sense Disambiguation (WSD) Technologies [software]. Retrieved from https://github.com/alvations/pywsd

In bibtex:

@misc{pywsd14,
author =   {Liling Tan},
title =    {Pywsd: Python Implementations of Word Sense Disambiguation (WSD) Technologies [software]},
howpublished = {https://github.com/alvations/pywsd},
year = {2014}
}

References

  • Michael Lesk. 1986. Automatic sense disambiguation using machine readable dictionaries: how to tell a pine cone from an ice cream cone. In Proceedings of the 5th annual international conference on Systems documentation (SIGDOC '86), Virginia DeBuys (Ed.). ACM, New York, NY, USA, 24-26. DOI=10.1145/318723.318728 http://doi.acm.org/10.1145/318723.318728

  • Satanjeev Banerjee and Ted Pedersen. 2002. An Adapted Lesk Algorithm for Word Sense Disambiguation Using WordNet. In Proceedings of the Third International Conference on Computational Linguistics and Intelligent Text Processing (CICLing '02), Alexander F. Gelbukh (Ed.). Springer-Verlag, London, UK, UK, 136-145.

  • Satanjeev Banerjee and Ted Pedersen. 2003. Extended gloss overlaps as a measure of semantic relatedness. In Proceedings of the Eighteenth International Joint Conference on Artificial Intelligence, pages 805–810, Acapulco.

  • Jay J. Jiang and David W. Conrath. 1997. Semantic similarity based on corpus statistics and lexical taxonomy. In Proceedings of International Conference on Research in Computational Linguistics, Taiwan.

  • Claudia Leacock and Martin Chodorow. 1998. Combining local context and WordNet similarity for word sense identification. In Fellbaum 1998, pp. 265–283.

  • Lee, Yoong Keok, Hwee Tou Ng, and Tee Kiah Chia. "Supervised word sense disambiguation with support vector machines and multiple knowledge sources." Senseval-3: Third International Workshop on the Evaluation of Systems for the Semantic Analysis of Text. 2004.

  • Dekang Lin. 1998. An information-theoretic definition of similarity. In Proceedings of the 15th International Conference on Machine Learning, Madison, WI.

  • Linlin Li, Benjamin Roth and Caroline Sporleder. 2010. Topic Models for Word Sense Disambiguation and Token-based Idiom Detection. The 48th Annual Meeting of the Association for Computational Linguistics (ACL). Uppsala, Sweden.

  • Andrea Moro, Roberto Navigli, Francesco Maria Tucci and Rebecca J. Passonneau. 2014. Annotating the MASC Corpus with BabelNet. In Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14). Reykjavik, Iceland.

  • Zhi Zhong and Hwee Tou Ng. 2010. It makes sense: a wide-coverage word sense disambiguation system for free text. In Proceedings of the ACL 2010 System Demonstrations (ACLDemos '10). Association for Computational Linguistics, Stroudsburg, PA, USA, 78-83.

  • Steven Bird, Ewan Klein, and Edward Loper. 2009. Natural Language Processing with Python (1st ed.). O'Reilly Media, Inc..

  • Eneko Agirre and Aitor Soroa. 2009. Personalizing PageRank for Word Sense Disambiguation. Proceedings of the 12th conference of the European chapter of the Association for Computational Linguistics (EACL-2009). Athens, Greece.

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Python Implementations of Word Sense Disambiguation (WSD) Technologies.

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