Automatic Discovery of Term Similarities Using Pattern Mining

G. Nenadic, Irena Spasic, S. Ananiadou
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引用次数: 51

Abstract

Term recognition and clustering are key topics in automatic knowledge acquisition and text mining. In this paper we present a novel approach to the automatic discovery of term similarities, which serves as a basis for both classification and clustering of domain-specific concepts represented by terms. The method is based on automatic extraction of significant patterns in which terms tend to appear. The approach is domain independent: it needs no manual description of domain-specific features and it is based on knowledge-poor processing of specific term features. However, automatically collected patterns are domain specific and identify significant contexts in which terms are used. Beside features that represent contextual patterns, we use lexical and functional similarities between terms to define a combined similarity measure. The approach has been tested and evaluated in the domain of molecular biology, and preliminary results are presented.
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基于模式挖掘的术语相似度自动发现
术语识别和聚类是自动知识获取和文本挖掘中的关键问题。在本文中,我们提出了一种自动发现术语相似度的新方法,该方法为术语表示的特定领域概念的分类和聚类奠定了基础。该方法是基于自动提取的重要模式,其中的术语往往出现。该方法是领域独立的:它不需要对特定领域的特征进行手动描述,并且它基于对特定术语特征的知识贫乏处理。然而,自动收集的模式是特定于领域的,并识别使用术语的重要上下文。除了表示上下文模式的特征外,我们还使用术语之间的词汇和功能相似性来定义组合的相似性度量。该方法已在分子生物学领域进行了测试和评估,并给出了初步结果。
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Automatic Discovery of Term Similarities Using Pattern Mining
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