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Synonym Discovery with Etymology-based Word Embeddings

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arxiv 1709.10445 v2 pith:QFHKHZ5T submitted 2017-09-29 cs.CL cs.AI

Synonym Discovery with Etymology-based Word Embeddings

classification cs.CL cs.AI
keywords etymologicalwordsmodelwordchinesediscoveryembeddingembeddings
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a novel approach to learn word embeddings based on an extended version of the distributional hypothesis. Our model derives word embedding vectors using the etymological composition of words, rather than the context in which they appear. It has the strength of not requiring a large text corpus, but instead it requires reliable access to etymological roots of words, making it specially fit for languages with logographic writing systems. The model consists on three steps: (1) building an etymological graph, which is a bipartite network of words and etymological roots, (2) obtaining the biadjacency matrix of the etymological graph and reducing its dimensionality, (3) using columns/rows of the resulting matrices as embedding vectors. We test our model in the Chinese and Sino-Korean vocabularies. Our graphs are formed by a set of 117,000 Chinese words, and a set of 135,000 Sino-Korean words. In both cases we show that our model performs well in the task of synonym discovery.

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