Many natural language processing tasks re-quire discriminating the particular meaning of a word in context, but building corpora for developing sense-aware models can be a chal-lenge. We present a large resource of example usages for words having a particular mean-ing, called Paraphrase-Sense-Tagged Sentences (PSTS). Built on the premise that a word’s paraphrases instantiate its fine-grained meanings (i.e., bug has different meanings corre-sponding to its paraphrases fly and microbe) the resource contains up to 10,000 sentences for each of 3 million target-paraphrase pairs where the target word takes on the meaning of the paraphrase. We describe an automatic method based on bilingual pivoting used to enumerate sentences for PSTS, and present two models for ranking PSTS sentences based on their quality. Finally, we demonstrate the utility of PSTS by using it to build a dataset for the task of hypernym prediction in con-text. Training a model on this automatically generated dataset produces accuracy that is competitive with a model trained on smaller datasets crafted with some manual effort.
CITATION STYLE
Cocos, A., & Callison-Burch, C. (2019). Paraphrase-Sense-Tagged Sentences. Transactions of the Association for Computational Linguistics, 7, 714–728. https://doi.org/10.1162/tacl_a_00295
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