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AuthorRawashdeh, Majdi
AuthorKim, Heung-Nam
AuthorAlja'am, Jihad Mohamad
AuthorEl Saddik, Abdulmotaleb
Available date2024-03-20T01:55:07Z
Publication Date2013
Publication NameJournal of Intelligent Information Systems
ResourceScopus
ISSN9259902
URIhttp://dx.doi.org/10.1007/s10844-012-0227-2
URIhttp://hdl.handle.net/10576/53259
AbstractNowadays social tagging has become a popular way to annotate, search, navigate and discover online resources, in turn leading to the sheer amount of user-generated metadata. This paper addresses the problem of recommending suitable tags during folksonomy development from a graph-based perspective. The proposed approach adapts the Katz measure, a path-ensemble based proximity measure, for the use in social tagging systems. We model a folksonomy as a weighted, undirected tripartite graph. We then apply the Katz measure to this graph, and exploit it to provide tag recommendations for individual users. We evaluate our method on two real-world folksonomies collected from CiteULike and Last.fm. The experimental results demonstrate that the proposed method improves the recommendation performance and is effective for both active taggers and cold-start taggers compared to existing algorithms.
SponsorAcknowledgement This publication was made possible by a grant from the Qatar National Research Fund NPRP 09-052-5-003.
Languageen
PublisherSpringer
SubjectFolksonomy
Graph-based ranking
Link prediction
Social tagging
Tag recommendation
Tripartite graph
TitleFolksonomy link prediction based on a tripartite graph for tag recommendation
TypeArticle
Pagination307-325
Issue Number2
Volume Number40
dc.accessType Abstract Only


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