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Cross-lingual Learning of Semantic Textual Similarity with Multilingual Word Representations

机译:多语言单词表示的语义文本相似度跨语言学习

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摘要

Assessing the semantic similarity between sentences in different languages is challenging. We approach this problem by leveraging multilingual distributional word representations, where similar words in different languages are close to each other. The availability of parallel data allows us to train such representations on a large amount of languages. This allows us to leverage semantic similarity data for languages for which no such data exists. We train and evaluate on five language pairs, including English, Spanish, and Arabic. We are able to train wellperforming systems for several language pairs, without any labelled data for that language pair.
机译:评估不同语言的句子之间的语义相似性具有挑战性。我们通过利用多语言分布的单词表示法来解决此问题,在该语言中,不同语言中的相似单词彼此接近。并行数据的可用性使我们能够在大量语言上训练此类表示形式。这使我们能够针对不存在此类数据的语言利用语义相似性数据。我们对五种语言对进行培训和评估,包括英语,西班牙语和阿拉伯语。我们能够为几种语言对训练良好的系统,而无需为该语言对提供任何标记数据。

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