Sparsity Makes Sense: Word Sense Disambiguation Using Sparse Contextualized Word Representations

EMNLP 2020  ·  G{\'a}bor Berend ·

In this paper, we demonstrate that by utilizing sparse word representations, it becomes possible to surpass the results of more complex task-specific models on the task of fine-grained all-words word sense disambiguation. Our proposed algorithm relies on an overcomplete set of semantic basis vectors that allows us to obtain sparse contextualized word representations. We introduce such an information theory-inspired synset representation based on the co-occurrence of word senses and non-zero coordinates for word forms which allows us to achieve an aggregated F-score of 78.8 over a combination of five standard word sense disambiguating benchmark datasets. We also demonstrate the general applicability of our proposed framework by evaluating it towards part-of-speech tagging on four different treebanks. Our results indicate a significant improvement over the application of the dense word representations.

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Word Sense Disambiguation Supervised: SparseLMMS+WNGC Senseval 2 79.6 # 8
Senseval 3 77.3 # 11
SemEval 2007 73.0 # 9
SemEval 2013 79.4 # 8
SemEval 2015 81.3 # 10
Word Sense Disambiguation Supervised: SparseLMMS Senseval 2 77.9 # 12
Senseval 3 77.8 # 7
SemEval 2007 68.8 # 13
SemEval 2013 76.1 # 12
SemEval 2015 77.5 # 13

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