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Papers/Improving the Coverage and the Generalization Ability of N...

Improving the Coverage and the Generalization Ability of Neural Word Sense Disambiguation through Hypernymy and Hyponymy Relationships

Loïc Vial, Benjamin Lecouteux, Didier Schwab

2018-11-02Word Sense Disambiguation
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Abstract

In Word Sense Disambiguation (WSD), the predominant approach generally involves a supervised system trained on sense annotated corpora. The limited quantity of such corpora however restricts the coverage and the performance of these systems. In this article, we propose a new method that solves these issues by taking advantage of the knowledge present in WordNet, and especially the hypernymy and hyponymy relationships between synsets, in order to reduce the number of different sense tags that are necessary to disambiguate all words of the lexical database. Our method leads to state of the art results on most WSD evaluation tasks, while improving the coverage of supervised systems, reducing the training time and the size of the models, without additional training data. In addition, we exhibit results that significantly outperform the state of the art when our method is combined with an ensembling technique and the addition of the WordNet Gloss Tagged as training corpus.

Results

TaskDatasetMetricValueModel
Word Sense DisambiguationSupervised:SemEval 200766.81SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSupervised:SemEval 201372.63SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSupervised:SemEval 201574.46SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSupervised:Senseval 275.15SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSupervised:Senseval 370.11SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSensEval 2F175.15SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSensEval 3 Task 1F170.11SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSemEval 2013 Task 12F172.63SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSemEval 2015 Task 13F174.46SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSemEval 2007 Task 7F186.02SemCor+WNGT, vocabulary reduced, ensemble
Word Sense DisambiguationSemEval 2007 Task 17F166.81SemCor+WNGT, vocabulary reduced, ensemble

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