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Multilingual Word Embeddings using Multigraphs

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arxiv 1612.04732 v1 pith:YSAMLYMY submitted 2016-12-14 cs.CL

Multilingual Word Embeddings using Multigraphs

classification cs.CL
keywords multilingualembeddingssemanticmodelssimilarityunsupervisedwordaccuracy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a family of neural-network--inspired models for computing continuous word representations, specifically designed to exploit both monolingual and multilingual text. This framework allows us to perform unsupervised training of embeddings that exhibit higher accuracy on syntactic and semantic compositionality, as well as multilingual semantic similarity, compared to previous models trained in an unsupervised fashion. We also show that such multilingual embeddings, optimized for semantic similarity, can improve the performance of statistical machine translation with respect to how it handles words not present in the parallel data.

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