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Addressing the Variability of Natural Language Expression in Sentence Similarity with Semantic Structure of the Sentences

机译:在句子相似度与句子语义结构中解决自然语言表达的变异性

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In this paper, we present a new approach that incorporates semantic structure of sentences, in a form of verb-argument structure, to measure semantic similarity between sentences. The variability of natural language expression makes it difficult for existing text similarity measures to accurately identify semantically similar sentences since sentences conveying the same fact or concept may be composed lexically and syntactically different. Inversely, sentences which are lexically common may not necessarily convey the same meaning. This poses a significant impact on many text mining applications' performance where sentence-level judgment is involved. The evaluation has shown that, by processing sentence at its semantic level, the performance of similarity measures is significantly improved.
机译:在本文中,我们提出了一种新的方法,该方法以动词-自变量结构的形式结合句子的语义结构,以测量句子之间的语义相似性。自然语言表达的可变性使现有文本相似性度量难以准确地识别语义上相似的句子,因为传达相同事实或概念的句子可能在词法和句法上不同。相反,词汇上通用的句子不一定传达相同的意思。这对涉及句子级别判断的许多文本挖掘应用程序的性能产生了重大影响。评估表明,通过在语义水平上处理句子,相似度的性能得到了显着提高。

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