EDS-MEMBED: Multi-sense embeddings based on enhanced distributional semantic structures via a graph walk over word senses
Eniafe Festus Ayetiran (1), Petr Sojka (1), V\'it Novotn\'y (1) ((1), Faculty of Informatics Masaryk University)

TL;DR
This paper introduces EDS-MEMBED, a method that enhances multi-sense word embeddings by leveraging semantic relations in WordNet through graph walks, improving performance on WSD and similarity tasks even with limited training data.
Contribution
It proposes a novel graph-based approach to enrich multi-sense embeddings using WordNet, addressing coverage issues and improving semantic similarity measures.
Findings
Achieves state-of-the-art results on several benchmark datasets.
Improves embedding quality with limited training data.
Enhances semantic similarity measures for word senses.
Abstract
Several language applications often require word semantics as a core part of their processing pipeline, either as precise meaning inference or semantic similarity. Multi-sense embeddings (M-SE) can be exploited for this important requirement. M-SE seeks to represent each word by their distinct senses in order to resolve the conflation of meanings of words as used in different contexts. Previous works usually approach this task by training a model on a large corpus and often ignore the effect and usefulness of the semantic relations offered by lexical resources. However, even with large training data, coverage of all possible word senses is still an issue. In addition, a considerable percentage of contextual semantic knowledge are never learned because a huge amount of possible distributional semantic structures are never explored. In this paper, we leverage the rich semantic structures…
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