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A Novel Approach to Word Sense Disambiguation Based on Topical and Semantic Association

机译:基于主题和语义关联的一种新型的词义消歧方法

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摘要

Word sense disambiguation (WSD) is a fundamental problem in nature language processing, the objective of which is to identify the most proper sense for an ambiguous word in a given context. Although WSD has been researched over the years, the performance of existing algorithms in terms of accuracy and recall is still unsatisfactory. In this paper, we propose a novel approach to word sense disambiguation based on topical and semantic association. For a given document, supposing that its topic category is accurately discriminated, the correct sense of the ambiguous term is identified through the corresponding topic and semantic contexts. We firstly extract topic discriminative terms from document and construct topical graph based on topic span intervals to implement topic identification. We then exploit syntactic features, topic span features, and semantic features to disambiguate nouns and verbs in the context of ambiguous word. Finally, we conduct experiments on the standard data set SemCor to evaluate the performance of the proposed method, and the results indicate that our approach achieves relatively better performance than existing approaches.
机译:词义消歧(WSD)是自然语言处理中的一个基本问题,其目的是为给定上下文中的歧义词识别最合适的词义。尽管多年来对WSD进行了研究,但是就准确性和查全率而言,现有算法的性能仍然不能令人满意。在本文中,我们提出了一种基于主题和语义关联的新颖的词义消歧方法。对于给定的文档,假设准确区分了其主题类别,则可通过相应的主题和语义上下文来识别歧义术语的正确含义。首先从文档中提取主题判别词,并基于主题跨度区间构造主题图,以实现主题识别。然后,我们利用句法特征,主题跨度特征和语义特征来消除歧义词上下文中的名词和动词。最后,我们对标准数据集SemCor进行了实验,以评估所提出方法的性能,结果表明我们的方法比现有方法具有相对更好的性能。

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