Publication | Closed Access
Tagsplanations
301
Citations
14
References
2009
Year
Unknown Venue
Computational Social ScienceSemantic TaggingTag RelevanceInformation RetrievalGroup RecommendersRecommender SystemsCommunity TagsSocial Multimedia TaggingLanguage StudiesCold-start ProblemContent AnalysisCollaborative FilteringText Mining
While recommender systems tell users what items they might like, explanations of recommendations reveal why they might like them. Explanations provide many benefits, from improving user satisfaction to helping users make better decisions. This paper introduces tagsplanations, which are explanations based on community tags. Tagsplanations have two key components: tag relevance, the degree to which a tag describes an item, and tag preference, the user's sentiment toward a tag. We develop novel algorithms for estimating tag relevance and tag preference, and we conduct a user study exploring the roles of tag relevance and tag preference in promoting effective tagsplanations. We also examine which types of tags are most useful for tagsplanations.
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