A Personalized Tag-Based Recommendation in Social Web Systems

Frederico Durao, Peter Dolog

Publikation: Bidrag til tidsskriftKonferenceartikel i tidsskriftForskningpeer review

16 Citationer (Scopus)

Abstract

Tagging activity has been recently identified as a potential source of knowledge about personal interests, preferences, goals, and other attributes known from user models. Tags themselves can be therefore used for finding personalized recommendations of items. In this paper, we present a tag-based recommender system which suggests similar Web pages based on the similarity of their tags from a Web 2.0 tagging application. The proposed approach extends the basic similarity calculus with external factors such as tag popularity, tag representativeness and the affinity between user and tag. In order to study and evaluate the recommender system, we have conducted an experiment involving 38 people from 12 countries using data from Del.icio.us, a social bookmarking web system on which users can share their personal bookmarks
OriginalsprogEngelsk
TidsskriftCEUR Workshop Proceedings
Vol/bind485
Sider (fra-til)40-49
ISSN1613-0073
StatusUdgivet - 2009
BegivenhedInternational Workshop on Adaptation and Personalization for Web 2.0 - Trento, Italien
Varighed: 22 jun. 200924 jun. 2009

Konference

KonferenceInternational Workshop on Adaptation and Personalization for Web 2.0
Land/OmrådeItalien
ByTrento
Periode22/06/200924/06/2009

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