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An Experimental Study of Graph Connectivity for Unsupervised Word Sense Disambiguation

机译:图联性的无监督词义消歧实验研究

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摘要

Word sense disambiguation (WSD), the task of identifying the intended meanings (senses) of words in context, has been a long-standing research objective for natural language processing. In this paper, we are concerned with graph-based algorithms for large-scale WSD. Under this framework, finding the right sense for a given word amounts to identifying the most ȁC;importantȁD; node among the set of graph nodes representing its senses. We introduce a graph-based WSD algorithm which has few parameters and does not require sense-annotated data for training. Using this algorithm, we investigate several measures of graph connectivity with the aim of identifying those best suited for WSD. We also examine how the chosen lexicon and its connectivity influences WSD performance. We report results on standard data sets and show that our graph-based approach performs comparably to the state of the art.
机译:词义消歧(WSD)是在上下文中识别词的预期含义(感觉)的任务,一直是自然语言处理的长期研究目标。在本文中,我们关注用于大规模WSD的基于图的算法。在此框架下,为给定单词找到正确的意义等同于确定最大的ȁC;重要的ȁD;图节点集合中代表其感官的节点。我们介绍了一种基于图的WSD算法,该算法具有很少的参数,并且不需要用于训练的有义注释的数据。使用此算法,我们研究了几种图形连通性度量,目的是确定最适合WSD的度量。我们还将检查所选词汇及其连接性如何影响WSD性能。我们报告标准数据集的结果,并表明我们基于图的方法的性能与现有技术相当。

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