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Word Sense Determination using WordNet and Sense Co-occurrence

机译:使用WordNet和Sense共现的Word Sense确定

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This paper presents a method of word sense disambiguation that assigns a target word the sense that is most related to the senses of its neighbor words. We explore the use of measures of relatedness between word senses based on a novel hybrid approach. First, we investigate how to "literally" and "regularly" express a "concept". We apply set algebra to Wordnet’s synsets cooperating with Wordnet’s word ontology. In this way we establish regular rules for constructing various representations (lexical notations) of a concept using Boolean operators and various word forms in synset(s). Then we construct a formal mechanism for quantifying and estimating the semantic relatedness between concepts - we facilitate "concept distribution statistics" to determine the degree of semantic relatedness between two lexically expressed concepts. Then we applied the measure of semantic relatedness to the WSD task. The experimental results showed good performance on Semcor, a subset of Brown corpus. We observe that measures of semantic relatedness are useful sources of information for word sense disambiguation.
机译:本文提出了一种词义歧义消除方法,该方法为目标词分配与其相邻词义最相关的词义。我们探索一种基于新型混合方法的词义之间相关性度量的使用。首先,我们研究如何“从字面上”和“定期”表达“概念”。我们将集合代数应用于Wordnet与Wordnet的单词本体合作的同义词集。通过这种方式,我们建立了规则规则,以使用布尔运算符和同义词集中的各种单词形式来构造概念的各种表示形式(词汇符号)。然后,我们构建一种量化和估计概念之间语义相关性的形式化机制-我们促进“概念分布统计”来确定两个词汇表达的概念之间语义相关性的程度。然后,我们将语义相关性的度量应用于WSD任务。实验结果表明,Semcor是布朗语料库的子集,具有良好的性能。我们观察到语义相关性的度量是单词歧义消除的有用信息来源。

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