领域特定术语层次结构的集成方法

Yin Kang, Lina Zhou, Dongsong Zhang
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引用次数: 4

摘要

理解文本不仅需要提取单个概念,还需要识别概念之间的语义关系。词汇资源在文本分析中有着广泛的应用。然而,随着网络上用户生成内容的数量和多样性的迅速增加,手工编写词汇资源已经很难跟上。自动概念层次结构被认为是解决上述问题的一种方法。尽管在概念层次的自动构建方面做了大量的工作,但很少有研究关注特定领域的概念。在本研究中,我们提出了一个构建特定领域概念层次结构的综合框架。通过综合概念之间不同类型的相关性测量,我们提出了一种基于在线消费者评论构建产品特征多分支层次结构的集成方法。实验结果表明,该算法除了缺少一些概念和环节外,几乎成功地重构了整个层次结构。从头开始,该算法重建了大约60%的人工构建的层次结构。该方法可以通过更好地理解用户查询来改进搜索结果,并促进电子商务中的个性化推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated method for hierarchy construction of domain-specific terms
Understanding text requires not only the extraction of individual concepts, but the identification of semantic relationships among concepts as well. Lexical resources have been applied to analyzing text in a wide range of applications. However, manual compilation of lexical resources is difficult to keep up with the rapid increase of the volume and diversity of user-generated content on the web. Automatic concept hierarchy construction has been considered as one solution to the above problem. Despite extensive effort on automatic construction of concept hierarchies, few studies have focused on the concepts of specific domains. In this study, we propose a comprehensive framework for building a domain-specific concept hierarchy. By synthesizing different types of measurements of relatedness among concepts, we propose an integrated method for building a multi-branch hierarchy of product features from online consumer reviews. The experiment results show that the proposed algorithm successfully reconstructs almost an entire hierarchy except for missing a few concepts and links. Starting from scratch, the algorithm reconstructed about 60% of the manually constructed hierarchy. The proposed method can be used to improve search results by better understanding user queries, and to facilitate personalized recommendations in e-commerce.
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