CLDec 22, 2017

Novel Ranking-Based Lexical Similarity Measure for Word Embedding

arXiv:1712.08439v12 citations
Originality Incremental advance
AI Analysis

This work addresses incremental improvements in word embedding similarity for semantic tasks, potentially benefiting natural language processing and bioinformatics applications.

The paper tackled the problem of imperfections in word embedding similarity by introducing a new ranking-based lexical similarity measure and other refinements, resulting in outperforming current literature results for joint ESL and TOEFL sets.

Distributional semantics models derive word space from linguistic items in context. Meaning is obtained by defining a distance measure between vectors corresponding to lexical entities. Such vectors present several problems. In this paper we provide a guideline for post process improvements to the baseline vectors. We focus on refining the similarity aspect, address imperfections of the model by applying the hubness reduction method, implementing relational knowledge into the model, and providing a new ranking similarity definition that give maximum weight to the top 1 component value. This feature ranking is similar to the one used in information retrieval. All these enrichments outperform current literature results for joint ESL and TOEF sets comparison. Since single word embedding is a basic element of any semantic task one can expect a significant improvement of results for these tasks. Moreover, our improved method of text processing can be translated to continuous distributed representation of biological sequences for deep proteomics and genomics.

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