Publication | Closed Access
TasteWeights
269
Citations
19
References
2012
Year
Unknown Venue
Computational Social ScienceGroup RecommendersSocial MediaInformation RetrievalData ScienceEngineeringSocial ComputingItem PredictionsCold-start ProblemPersonalized SearchConversational Recommender SystemCollaborative FilteringSemantic WebArtsHybrid TechniquesHybrid SystemText Mining
This paper presents an interactive hybrid recommendation system that generates item predictions from multiple social and semantic web resources, such as Wikipedia, Facebook, and Twitter. The system employs hybrid techniques from traditional recommender system literature, in addition to a novel interactive interface which serves to explain the recommendation process and elicit preferences from the end user. We present an evaluation that compares different interactive and non-interactive hybrid strategies for computing recommendations across diverse social and semantic web APIs. Results of the study indicate that explanation and interaction with a visual representation of the hybrid system increase user satisfaction and relevance of predicted content.
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