Bridging Folksonomies and Domain Ontologies: Getting Out Non-taxonomic Relations

C. Trabelsi, A. Jrad, S. Yahia
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引用次数: 32

Abstract

Social book marking tools are rapidly emerging on the Web as it can be witnessed by the overwhelming number of participants. In such spaces, users annotate resources by means of any keyword or tag that they find relevant, giving raise to lightweight conceptual structures \emph{aka} folksonomies. In this respect, needless to mention that ontologies can be of benefit for enhancing information retrieval metrics. In this paper, we introduce a novel approach for ontology learning from a \textit{folksonomy}, which provide shared vocabularies and semantic relations between tags. The main thrust of the introduced approach stands in putting the focus on the discovery of \textit{non-taxonomic} relationships. The latter are often neglected, even though they are of paramount importance from a semantic point of view. The discovery process heavily relies on triadic concepts to discover and select related tags and to extract and label non-taxonomically relationships between related tags and external sources for tags filtering and non-taxonomic relationships extraction. In addition, we also discuss a new approach to evaluate obtained relations in an automatic way against WordNet repository and presents promising results for a real world \textit{folksonomy}.
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架起民间分类法和领域本体的桥梁:找出非分类关系
社交图书标记工具在网络上迅速崛起,因为它可以被大量参与者所见证。在这样的空间中,用户通过他们认为相关的任何关键字或标签来注释资源,从而产生轻量级的概念结构,\emph{即}大众分类法。在这方面,不必提及本体对于增强信息检索度量的好处。本文介绍了一种基于\textit{大众分类法}的本体学习方法,该方法提供了标签之间的共享词汇表和语义关系。所介绍的方法的主要目的在于把重点放在发现\textit{非分类学}关系上。后者经常被忽视,尽管从语义的角度来看它们是至关重要的。发现过程在很大程度上依赖于三元概念来发现和选择相关标签,并提取和标记相关标签与外部源之间的非分类关系,以进行标签过滤和非分类关系提取。此外,我们还讨论了一种基于WordNet知识库自动评估获得的关系的新方法,并为现实世界的\textit{大众分类法}提供了有希望的结果。
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