Automatically Generating a Concept Hierarchy with Graphs

Pucktada Treeratpituk, Madian Khabsa, C. Lee Giles
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Abstract

We propose a novel graph-based approach for constructing concept hierarchy from a large text corpus. Our algorithm incorporates both statistical co-occurrences and lexical similarity in optimizing the structure of the taxonomy. To automatically generate topic-dependent taxonomies from a large text corpus, we first extracts topical terms and their relationships from the corpus. The algorithm then constructs a weighted graph representing topics and their associations. A graph partitioning algorithm is then used to recursively partition the topic graph into a taxonomy. For evaluation, we apply our approach to articles, primarily computer science, in the CiteSeerX digital library and search engine.
用图形自动生成概念层次结构
我们提出了一种新的基于图的方法来从大型文本语料库中构建概念层次结构。我们的算法结合了统计共现和词汇相似来优化分类结构。为了从大型文本语料库中自动生成主题相关的分类法,我们首先从语料库中提取主题术语及其关系。然后,该算法构建一个表示主题及其关联的加权图。然后使用图划分算法递归地将主题图划分为一个分类法。为了进行评估,我们将我们的方法应用于CiteSeerX数字图书馆和搜索引擎中的文章,主要是计算机科学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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