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Unsupervised Approaches for Computing Word Similarity in Portuguese

机译:在葡萄牙语中计算单词相似性的无监督方法

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This paper presents several approaches for computing word similarity in Portuguese and is motivated by the recent availability of state-of-the-art distributional models of Portuguese words, which add to several lexical knowledge bases (LKBs) for this language, available for a longer time. The previous resources were exploited to answer word similarity tests, also recently available for Portuguese. We conclude that there are several valid approaches for this task, but not one that outperforms all the others in every single test. For instance, distributional models seem to capture relatedness better, but LKBs are better suited for computing genuine similarity.
机译:本文介绍了葡萄牙语中计算单词相似性的几种方法,并受到葡萄牙语词语最新的可用性的动机,这增加了这种语言的几个词汇知识库(LKBS),可供使用更长时间。以前的资源被利用以回答单词相似性测试,最近也可用于葡萄牙语。我们得出结论,这项任务有几种有效的方法,但不是一个在每一次测试中表达所有其他人的一个有效方法。例如,分布模型似乎更好地捕获相关性,但LKB更适合计算真正的相似性。

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