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LIM-LIG at SemEval-2017 Task1: Enhancing the Semantic Similarity for Arabic Sentences with Vectors Weighting

机译:LIM-LIG在SemEval-2017上的任务1:通过向量加权增强阿拉伯句子的语义相似性

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This article describes our proposed system named LIM-LIG. This system is designed for SemEval 2017 Taskl: Semantic Textual Similarity (Trackl). LIM-LIG proposes an innovative enhancement to word embedding-based model devoted to measure the semantic similarity in Arabic sentences. The main idea is to exploit the word representations as vectors in a multidimensional space to capture the semantic and syntactic properties of words. IDF weighting and Part-of-Speech tagging are applied on the examined sentences to support the identification of words that are highly descriptive in each sentence. LIM-LIG system achieves a Pearsons correlation of 0.74633, ranking 2nd among all participants in the Arabic monolingual pairs STS task organized within the SemEval 2017 evaluation campaign.
机译:本文介绍了我们提出的名为LIM-LIG的系统。该系统是为SemEval 2017 Taskl:语义文本相似性(Trackl)设计的。 LIM-LIG对基于词嵌入的模型提出了一种创新的增强,该模型致力于测量阿拉伯句子中的语义相似性。主要思想是在多维空间中利用单词表示作为矢量来捕获单词的语义和句法属性。将IDF加权和词性标记应用于检查的句子,以支持识别每个句子中具有高度描述性的单词。 LIM-LIG系统的Pearsons相关系数为0.74633,在SemEval 2017评估活动中组织的阿拉伯语对STS任务的所有参与者中排名第二。

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