作者
Michael G Noll, Ching-man Au Yeung, Nicholas Gibbins, Christoph Meinel, Nigel Shadbolt
发表日期
2009/7/19
图书
Proceedings of the 32nd international ACM SIGIR conference on Research and development in information retrieval
页码范围
612-619
简介
With a suitable algorithm for ranking the expertise of a user in a collaborative tagging system, we will be able to identify experts and discover useful and relevant resources through them. We propose that the level of expertise of a user with respect to a particular topic is mainly determined by two factors. Firstly, an expert should possess a high quality collection of resources, while the quality of a Web resource depends on the expertise of the users who have assigned tags to it. Secondly, an expert should be one who tends to identify interesting or useful resources before other users do. We propose a graph-based algorithm, SPEAR (SPamming-resistant Expertise Analysis and Ranking), which implements these ideas for ranking users in a folksonomy. We evaluate our method with experiments on data sets collected from Delicious.com comprising over 71,000 Web documents, 0.5 million users and 2 million shared …
引用总数
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学术搜索中的文章
MG Noll, C Au Yeung, N Gibbins, C Meinel, N Shadbolt - Proceedings of the 32nd international ACM SIGIR …, 2009