An Unsupervised Approach to Chinese Word Sense Disambiguation Based on Hownet

Hao Chen, Tingting He, D. Ji, Changqin Quan
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引用次数: 5

Abstract

The research on word sense disambiguation (WSD) has great theoretical and practical significance in many fields of natural language processing (NLP). This paper presents an unsupervised approach to Chinese word sense disambiguation based on Hownet (an electronic Chinese lexical resource). In our approach, contexts that include ambiguous words are converted into vectors by means of a second-order context method, and these context vectors are then clustered by the k-means clustering algorithm. Lastly, the ambiguous words can be disambiguated after a similarity calculation process is completed. Our experiments involved extraction of terms, and an 82.62% average accuracy rate was achieved.
基于Hownet的汉语词义消歧的无监督方法
词义消歧的研究在自然语言处理(NLP)的许多领域都具有重要的理论和现实意义。本文提出了一种基于知网(一个汉语电子词汇资源)的无监督汉语词义消歧方法。在我们的方法中,包含歧义词的上下文通过二阶上下文方法转换为向量,然后通过k-means聚类算法对这些上下文向量进行聚类。最后,对歧义词进行相似度计算,消除歧义。我们的实验涉及术语的提取,平均准确率达到82.62%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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