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Conference Papers Year : 2010

A Laplacian Eigenmaps Based Semantic Similarity Measure between Words

Abstract

The measurement of semantic similarity between words is very important in many applicaitons. In this paper, we propose a method based on Laplacian eigenmaps to measure semantic similarity between words. First, we attach semantic features to each word. Second, a similarity matrix ,which semantic features are encoded into, is calculated in the original high-dimensional space. Finally, with the aid of Laplacian eigenmaps, we recalculate the similarities in the target low-dimensional space. The experiment on the Miller-Charles benchmark shows that the similarity measurement in the low-dimensional space achieves a correlation coefficient of 0.812, in contrast with the correlation coefficient of 0.683 calculated in the high-dimensional space, implying a significant improvement of 18.9%.
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hal-01060365 , version 1 (21-11-2017)

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Yuming Wu, Cungen Cao, Shi Wang, Dongsheng Wang. A Laplacian Eigenmaps Based Semantic Similarity Measure between Words. 6th IFIP TC 12 International Conference on Intelligent Information Processing (IIP), Oct 2010, Manchester, United Kingdom. pp.291-296, ⟨10.1007/978-3-642-16327-2_35⟩. ⟨hal-01060365⟩
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