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Linear transformations for cross-lingual semantic textual similarity

机译:跨语言语义文本相似性的线性转换

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摘要

Cross-lingual semantic textual similarity systems estimate the degree of the meaning similarity between two sentences, each in a different language. State-of-the-art algorithms usually employ machine translation and combine vast amount of features, making the approach strongly supervised, resource rich, and difficult to use for poorly-resourced languages.In this paper, we study linear transformations, which project monolingual semantic spaces into a shared space using bilingual dictionaries. We propose a novel transformation, which builds on the best ideas from prior works. We experiment with unsupervised techniques for sentence similarity based only on semantic spaces and we show they can be significantly improved by the word weighting. Our transformation outperforms other methods and together with word weighting leads to very promising results on several datasets in different languages. (C) 2019 Elsevier B.V. All rights reserved.
机译:跨语言语义文本相似性系统估计两个句子之间的含义相似度,每个句子使用不同的语言。最先进的算法通常采用机器翻译并结合大量功能,从而使该方法受到严格监督,资源丰富并且难以用于资源贫乏的语言。本文研究线性变换,该模型投影为单语言使用双语词典将语义空间转换为共享空间。我们提出了一种新颖的变革,它以先前作品中的最佳思想为基础。我们仅基于语义空间对句子相似度的无监督技术进行了实验,结果表明,通过单词加权可以显着改善句子相似度。我们的转换胜过其他方法,并且与词权重一起在不同语言的多个数据集上产生了非常可观的结果。 (C)2019 Elsevier B.V.保留所有权利。

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