基于WordNet内容管理信息的语义相似度度量分析与实现

Tommy Wijaya Sagala, Theresia Wati, Solikin, N. Budi, A. Hidayanto
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引用次数: 3

摘要

在自然语言处理(NLP)中,语义相似度的测量起着重要的作用。这些测量的结果通常用作执行自然语言处理任务的基础,例如问题回答、文档分类、机器翻译等等。本文利用最新的数据集,分析了在WordNet上实现内容管理利用的测试结果,以分类的形式度量语义相似度值。进一步的实施结果与金标准数据集进行比较,以测量性能。用于测试的数据集是SimLex-999。在绩效评估中,使用Pearson相关和Spearman相关。使用这两种相关性是因为每种相关性都有一些优点和缺点。根据检验结果,Seco公式得出Pearson相关为0.583,Spearman相关为0.582。而新公式的Pearson相关和Spearman相关分别为0.602和0.594。相关结果显示出强正相关关系。因此,用WordNet中的信息内容方法来度量语义相似度值是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Implementation Measurement of Semantic Similarity Using Content Management Information on WordNet
In natural language processing (NLP), measuring semantic similarity plays an important role. The results of these measurements are often used as the basis for performing natural language processing tasks such as question answering, document classification, machine translation, and so on. This paper analyses the test results using the latest dataset on the implementation of content management utilization on WordNet in the form of taxonomy in measuring semantic similarity values. Further implementation results are compared with Gold Standard datasets for measured performance. The dataset used for testing is SimLex-999. In performance measurement, Pearson Correlation and Spearman Correlation are used. The use of these two correlations because each correlation has several advantages and disadvantages. Based on the test results, Seco Formula resulted in Pearson Correlation and Spearman Correlation of 0.583 and 0.582 respectively. While New Formula resulted in Pearson Correlation and Spearman Correlation respectively of 0.602 and 0.594. The correlation results show strong positive correlation relationship. Therefore, the method of information content in WordNet is feasible to be used to measure the value of semantic similarity.
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