文本形式概念的自动习得

Pablo Gamallo, J. Lopes, Alexandre Agustini
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引用次数: 6

摘要

本文描述了一种从词性标注语料库中提取概念的无监督方法。该方法包括建立两个词及其词汇句法上下文的二维聚类。该方法基于形式概念分析(FCA)。每个生成的集群都被定义为一个形式概念,其中包含一组描述概念扩展的单词,以及一组被视为扩展中所有单词有效的内涵属性(或属性)的上下文。聚类过程依赖于两个概念操作:抽象和规范。前者允许我们通过交叉合并概念的内涵并将它们的扩展合并来构建一个更通用的概念。与此相反,规范使内涵结合,并使扩展相交。结果是一个概念格,它描述了训练语料库底层的特定领域本体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Acquisition of Formal Concepts from Text
This paper describes an unsupervised method for extracting concepts from Part-Of-Speech annotated corpora. The method consists in building bidimensional clusters of both words and their lexico-syntactic contexts. The method is based on Formal Concept Analysis (FCA). Each generated cluster is defined as a formal concept with a set of words describing the extension of the concept and a set of contexts perceived as the intensional attributes (or properties) valid for all the words in the extension. The clustering process relies on two concept operations: abstraction and specification. The former allows us to build a more generic concept by intersecting the intensions of the merged concepts and making the union of their extensions. By contrast, specification makes the union of the intensions and intersects the extensions. The result is a concept lattice that describes the domain-specific ontology underlying the training corpus.
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