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SPEAR: SPAMMING-RESISTANT EXPERTISE ANALYSIS AND RANKING IN COLLABORATIVE TAGGING SYSTEMS

机译:矛:协作标记系统中的防垃圾邮件专家分析和排名

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摘要

In this article, we discuss the notions of experts and expertise in resource discovery in the context of collaborative tagging systems. We propose that the level of expertise of a user with respect to a particular topic is mainly determined by two factors. First, an expert should possess a high-quality collection of resources, while the quality of a Web resource in turn depends on the expertise of the users who have assigned tags to it, forming a mutual reinforcement relationship. Second, an expert should be one who tends to identify interesting or useful resources before other users discover them, thus bringing these resources to the attention of the community of users. We propose a graph-based algorithm, SPEAR (spamming-resistant expertise analysis and ranking), which implements the above ideas for ranking users in a folksonomy. Our experiments show that our assumptions on expertise in resource discovery, and SPEAR as an implementation of these ideas, allow us to promote experts and demote spammers at the same time, with performance significantly better than the original hypertext-induced topic search algorithm and simple statistical measures currently used in most collaborative tagging systems.
机译:在本文中,我们将讨论协作标记系统中资源发现方面的专家和专业知识的概念。我们建议用户对特定主题的专业水平主要由两个因素决定。首先,专家应该拥有高质量的资源集合,而Web资源的质量又取决于为其分配标签的用户的专业知识,从而形成了相互加强的关系。其次,专家应该是倾向于在其他用户发现有趣或有用的资源之前就将其识别出来的方法,从而使这些资源引起用户社区的注意。我们提出了一种基于图的算法SPEAR(抗垃圾邮件的专业知识分析和排名),该算法实现了上述思想,用于在民俗分类法中排名用户。我们的实验表明,我们对资源发现专业知识的假设以及SPEAR作为这些想法的实现,使我们能够同时提升专家水平和降级垃圾邮件发送者,其性能明显优于原始的超文本诱导主题搜索算法和简单的统计信息当前大多数协作标记系统中使用的度量。

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