Publication | Open Access
Semi-supervised Word Sense Disambiguation with Neural Models
83
Citations
33
References
2016
Year
EngineeringMachine LearningIntended SenseSemanticsText MiningWord EmbeddingsApplied LinguisticsNatural Language ProcessingInformation RetrievalComputational LinguisticsWsd AlgorithmsNeural ModelsLanguage StudiesLanguage ModelsMachine TranslationEntity DisambiguationNlp TaskDistributional SemanticsLinguisticsSame LstmWord-sense DisambiguationPo Tagging
Determining the intended sense of words in text - word sense disambiguation (WSD) - is a long standing problem in natural language processing. Recently, researchers have shown promising results using word vectors extracted from a neural network language model as features in WSD algorithms. However, a simple average or concatenation of word vectors for each word in a text loses the sequential and syntactic information of the text. In this paper, we study WSD with a sequence learning neural net, LSTM, to better capture the sequential and syntactic patterns of the text. To alleviate the lack of training data in all-words WSD, we employ the same LSTM in a semi-supervised label propagation classifier. We demonstrate state-of-the-art results, especially on verbs.
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