词与句子相似度分析方法的比较研究

Farooq Ahmad, Mohd. Faisal
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引用次数: 1

摘要

本研究旨在分析句子相似度的测试方法。对于许多自然语言处理应用,如文本分组、信息恢复、简短反应审查、机器学习、段落摘要和文本分类,测量句子之间的相似性是一项至关重要的活动。在本文中,我们将基于实现方法的句子相似度度量方法分为三类。查找短语相似度最常用的方法是基于词对词、基于结构和基于向量的方法。每种方法都以特定的观点为中心,测试短文本之间的交互作用。此外,为了提供这个问题的完整视图,还添加了经常用作该领域测试技术基准的数据集。通过包含多个观点的方法可以获得更好的结果。此外,句子的相似度是基于语义的对应关系来检验两个概念、词或句子之间的语义相似度,这需要进一步的研究。
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Comparative Study of Techniques used for Word and Sentence Similarity
This study is intended to analyze the methods used to test resemblance of sentences. For many Natural Language Processing applications such as text grouping, information recovery, brief reaction reviewing, machine learning, passage summary and text categorization, measuring resemblance between sentences is a vital activity. In this paper, we classify the approaches to measuring the resemblance of sentences based on the methods implemented into three groups. The most frequently used methods to finding phrase resemblance are word-to-word based, structure-based, and vector-based. Centered on a particular viewpoint, each approach tests the interaction between short texts. Furthermore, to provide a full view of this problem, datasets that are often used as benchmarks for testing techniques in this field are added. Better outcomes are obtained through methods that incorporate more than one viewpoint. In addition, resemblance of sentences is based on the correspondence of their meanings that tests the semantic resemblance between two concepts, words or sentences needs further research.
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