Publication | Closed Access
Social collaborative filtering for cold-start recommendations
118
Citations
9
References
2014
Year
Unknown Venue
EngineeringCommunicationSocial Collaborative FilteringComputational Social ScienceOnline Retail SettingSocial MediaInformation RetrievalData ScienceData MiningSocial Network AnalysisPredictive AnalyticsKnowledge DiscoveryPersonalized SearchComputer ScienceCold-start ProblemInformation Filtering SystemSide InformationGroup RecommendersSocial ComputingInteractive MarketingCold-start Recommendation TaskArtsCollaborative Filtering
We examine the cold-start recommendation task in an online retail setting for users who have not yet purchased (or interacted in a meaningful way with) any available items but who have granted access to limited side information, such as basic demographic data (gender, age, location) or social network information (Facebook friends or page likes). We formalize neighborhood-based methods for cold-start collaborative filtering in a generalized matrix algebra framework that does not require purchase data for target users when their side information is available. In real-data experiments with 30,000 users who purchased 80,000+ books and had 9,000,000+ Facebook friends and 6,000,000+ page likes, we show that using Facebook page likes for cold-start recommendation yields up to a 3-fold improvement in mean average precision (mAP) and up to 6-fold improvements in Precision@k and Recall@k compared to most-popular-item, demographic, and Facebook friend cold-start recommenders. These results demonstrate the substantial predictive power of social network content, and its significant utility in a challenging problem - recommendation for cold-start users.
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