Optimizing search and ranking in folksonomy systems by exploiting context information

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Abstract

Tagging systems enable users to annotate resources with freely chosen keywords. The evolving bunch of tag assignments is called folksonomy and there exist already some approaches that exploit folksonomies to improve resource retrieval. In this paper, we analyze and compare graph-based ranking algorithms: FolkRank and SocialPageRank. We enhance these algorithms by exploiting the context of tags, and evaluate the results on the GroupMe! dataset. In GroupMe!, users can organize and maintain arbitrary Web resources in self-defined groups. When users annotate resources in GroupMe!, this can be interpreted in context of a certain group. The grouping activity itself is easy for users to perform. However, it delivers valuable semantic information about resources and their context. We present GRank that uses the context information to improve and optimize the detection of relevant search results, and compare different strategies for ranking result lists in folksonomy systems. © 2010 Springer-Verlag.

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Abel, F., Henze, N., & Krause, D. (2010). Optimizing search and ranking in folksonomy systems by exploiting context information. In Lecture Notes in Business Information Processing (Vol. 45 LNBIP, pp. 113–127). Springer Verlag. https://doi.org/10.1007/978-3-642-12436-5_9

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