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Intelligent recognition of semantic relationships based on antonymy

机译:基于对抗的语义关系智能识别

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Since computing semantic similarity tends to simulate the thinking process of humans, semantic dissimilarity must play a part in this process. In this paper, we present a new approach for semantic similarity measuring by taking consideration of dissimilarity into the process of computation. Specifically, the proposed measures explore the potential antonymy in the hierarchical structure of WordNet to represent the dissimilarity between concepts and then combine the dissimilarity with the results of existing methods to achieve semantic similarity results. The relation between parameters and the correlation value is discussed in detail. The proposed model is then applied to different text granularity levels to validate the correctness on similarity measurement. Experimental results show that the proposed approach not only achieves high correlation value against human ratings but also has effective improvement to existing path-distance based methods on the word similarity level, in the meanwhile effectively correct existing sentence similarity method in some cases in Microsoft Research Paraphrase Corpus and SemEval-2014 date set.
机译:由于计算语义相似性倾向于模拟人类的思维过程,因此语义不相似必须在这个过程中发挥作用。在本文中,我们通过考虑到计算过程来提出语义相似性测量的新方法。具体而言,拟议的措施探讨了Wordnet的层次结构中的潜在反义,以表示概念之间的不相似性,然后将不同的方法与现有方法的结果结合起来,以实现语义相似性结果。详细讨论了参数与相关值之间的关系。然后将所提出的模型应用于不同的文本粒度水平以验证相似度测量的正确性。实验结果表明,该方法不仅实现了对人类评级的高相关价值,而且还对基于字的基于路径距离的方法有效改进,同时有效地纠正了Microsoft研究释义的某些情况下的现有句子相似性方法语料库和Semeval-2014日期集。

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