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Hyponymy Graph Model for Word Semantic Similarity Measurement

机译:词语义相似度度量的同义图模型

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摘要

Measuring word semantic similarity is a generic problem with a broad range of applications such as ontology mapping, computational linguistics and artificial intelligence. Previous approaches to computing word semantic similarity did not consider concept occurrence frequency and word’s sense number. This paper introduced Hyponymy graph, and based on which proposed a novel word semantic similarity model. For two words to be compared, we first retrieve their related concepts; then produce lowest common ancestor matrix and distance matrix between concepts; finally calculate distance-based similarity and information-based similarity, which are integrated to get final semantic similarity. The main contribution of our method is that both concept occurrence frequency and word’s sense number are taken into account. This similarity measurement more closely fits with human rating and effectively simulates human thinking process. Our experimental results on benchmark dataset M&C and R&G with WordNet2.1 as platform demonstrate roughly 0.9%–1.2% improvements over existing best approaches.
机译:测量词的语义相似性是一个普遍的问题,具有广泛的应用,例如本体映射,计算语言学和人工智能。以前计算单词语义相似度的方法没有考虑概念出现的频率和单词的有义数。介绍了Hyponymy图,并在此基础上提出了一种新的词语义相似度模型。为了比较两个单词,我们首先检索它们的相关概念;然后产生概念之间的最低共同祖先矩阵和距离矩阵;最终计算出基于距离的相似度和基于信息的相似度,将它们综合起来以获得最终的语义相似度。我们方法的主要贡献在于,同时考虑了概念出现频率和单词的有义数。这种相似性度量更符合人类的评价,并有效地模拟了人类的思维过程。我们在以WordNet2.1为平台的基准数据集M&C和R&G上的实验结果表明,与现有的最佳方法相比,大约可提高0.9%-1.2%。

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