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Towards A Universal Semantic Dictionary

APPLIED SCIENCES-BASEL(2019)

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摘要
A novel method for finding linear mappings among word embeddings for several languages, taking as pivot a shared, multilingual embedding space, is proposed in this paper. Previous approaches learned translation matrices between two specific languages, while this method learns translation matrices between a given language and a shared, multilingual space. The system was first trained on bilingual, and later on multilingual corpora as well. In the first case, two different training data were applied: Dinu's English-Italian benchmark data, and English-Italian translation pairs extracted from the PanLex database. In the second case, only the PanLex database was used. The system performs on English-Italian languages with the best setting significantly better than the baseline system given by Mikolov, and it provides a comparable performance with more sophisticated systems. Exploiting the richness of the PanLex database, the proposed method makes it possible to learn linear mappings among an arbitrary number of languages.
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关键词
natural language processing,semantics,word embeddings,multilingual embeddings,translation,artificial neural networks
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