基于语义和启发式的释义识别方法

Muhidin A. Mohamed, M. Oussalah
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引用次数: 0

摘要

在本文中,我们提出了一种基于语义的释义识别方法。该建议的核心概念是当句子包含一组命名实体和常用词时识别释义。所开发的方法将命名实体标记的语义相似度计算与句子文本的其他部分区分开来。更具体地说,这是基于从WordNet分类关系中导出的词语义相似度和从Wikipedia数据库中众包知识推断的命名实体语义相关性的集成。此外,我们还借助范畴变异数据库(CatVar)对动词、形容词和副词的名词化进行了改进。然后使用两个不同的数据集评估释义识别系统;即微软研究释义语料库(MSRPC)和TREC-9问题变体。在上述数据集上的实验结果表明,我们的系统在意译识别任务中优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic and Heuristic Based Approach for Paraphrase Identification
In this paper, we propose a semantic-based paraphrase identification approach. The core concept of this proposal is to identify paraphrases when sentences contain a set of named-entities and common words. The developed approach distinguishes the computation of the semantic similarity of named-entity tokens from the rest of the sentence text. More specifically, this is based on the integration of word semantic similarity derived from WordNet taxonomic relations, and named-entity semantic relatedness inferred from the crowd-sourced knowledge in Wikipedia database. Besides, we improve WordNet similarity measure by nominalizing verbs, adjectives and adverbs with the aid of Categorial Variation database (CatVar). The paraphrase identification system is then evaluated using two different datasets; namely, Microsoft Research Paraphrase Corpus (MSRPC) and TREC-9 Question Variants. Experimental results on the aforementioned datasets show that our system outperforms baselines in the paraphrase identification task.
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