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An Unsupervised Model for Exploring Hierarchical Semantics from Social Annotations

机译:从社会注释中探索层次语义的无监督模型

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摘要

This paper deals with the problem of exploring hierarchical semantics from social annotations. Recently, social annotation services have become more and more popular in Semantic Web. It allows users to arbitrarily annotate web resources, thus, largely lowers the barrier to cooperation. Furthermore, through providing abundant meta-data resources, social annotation might become a key to the development of Semantic Web. However, on the other hand, social annotation has its own apparent limitations, for instance, 1) ambiguity and synonym phenomena and 2) lack of hierarchical information. In this paper, we propose an unsupervised model to automatically derive hierarchical semantics from social annotations. Using a social bookmark service Del.icio.us as example, we demonstrate that the derived hierarchical semantics has the ability to compensate those shortcomings. We further apply our model on another data set from Flickr to testify our model's applicability on different environments. The experimental results demonstrate our model's efficiency.
机译:本文探讨了从社会注释中探索分层语义的问题。最近,社交注释服务在语义Web中变得越来越流行。它允许用户任意注释Web资源,从而大大降低了合作的障碍。此外,通过提供丰富的元数据资源,社交注释可能成为语义网发展的关键。但是,另一方面,社会注释具有其明显的局限性,例如,1)歧义和同义词现象,以及2)缺乏分层信息。在本文中,我们提出了一种无监督模型来自动从社交注释中导出层次语义。以社交书签服务Del.icio.us为例,我们演示了派生的分层语义能够弥补这些缺点。我们进一步将模型应用于Flickr的另一个数据集,以证明我们的模型在不同环境下的适用性。实验结果证明了我们模型的有效性。

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