A Concept-Driven Automatic Ontology Generation Approach for Conceptualization of Document Corpora

Haitao Zheng, Charles Borchert, H. Kim
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引用次数: 8

Abstract

In the age of increasing information availability, many techniques, such as document clustering and information visualization, have been developed to ease understanding of information for users. However, most of these methods do not help users directly understand key concepts and their semantic relationships in document corpora, which are critical for capturing their conceptual structures. Therefore, we propose a novel approach called 'Clonto' to identify the key concepts and automatically generate ontologies based on these concepts for conceptualization of document corpora. Clonto applies latent semantic analysis to identify key concepts, allocates documents based on these concepts, and utilizes WordNet to automatically generate a corpus-related ontology. The documents are linked to the ontology through the key concepts. The experimental results show that Clonto can identify key concepts with a high precision and the clustering results of Clonto outperform the STC (Suffix Tree Clustering) algorithm, the Lingo clustering algorithm, the Fuzzy Ants clustering algorithm, and clustering based on TRS (Tolerance Rough Set). Moreover, based on the same document corpus, the ontology generated by Clonto shows a significant informative conceptual structure.
一种概念驱动的文档语料库概念化本体自动生成方法
在信息可用性日益增加的时代,许多技术,如文档聚类和信息可视化,已经被开发出来,以方便用户理解信息。然而,大多数这些方法并不能帮助用户直接理解文档语料库中的关键概念及其语义关系,而这些概念和语义关系对于捕获它们的概念结构至关重要。因此,我们提出了一种名为“Clonto”的新方法来识别关键概念,并基于这些概念自动生成本体,用于文档语料库的概念化。Clonto应用潜在语义分析来识别关键概念,根据这些概念分配文档,并利用WordNet自动生成与语料库相关的本体。文档通过关键概念链接到本体。实验结果表明,Clonto能够以较高的精度识别关键概念,其聚类结果优于STC (Suffix Tree clustering)算法、Lingo聚类算法、Fuzzy Ants聚类算法和基于TRS (Tolerance Rough Set)的聚类。此外,基于相同的文档语料库,Clonto生成的本体显示出显著的信息概念结构。
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