基于词相关性分析的文档语义关系提取

Sérgio William Botero, I. Ricarte
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引用次数: 0

摘要

本体对于组织和描述信息很重要,但很难创建和维护,这促使开发工具来帮助完成这项任务。本文提出了一种从给定领域的文档语料库中提取表达术语和概念之间接近关系的语义元素的策略,以帮助构建领域本体。本文介绍的ACT技术基于语言处理、机器学习和双聚类。结果表明,ACT获得的概念至少与类似技术(如LSI和NMF)的概念一样好。与这些技术相比,它还具有允许领域专家监督的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Relation Extraction by Analysis of Terms Correlation in Documents
Ontologies are important to organize and describe information, but are hard to create and maintain, which motivates the development of tools to help in this task. This article presents a strategy to extract, from a corpora of documents in a given domain, semantic elements expressing proximity relations between terms and concepts to help the construction of domain ontologies. The technique presented here, ACT, is based on linguistic processing, machine learning, and biclustering. Results show that concepts obtained by ACT are at least as good as those from similar techniques, such as LSI and NMF. In relation to those techniques, it additionally has the advantage of allowing the supervision by a domain expert.
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