Publication | Open Access
VBPR: Visual Bayesian Personalized Ranking from Implicit Feedback
898
Citations
32
References
2016
Year
Artificial IntelligenceRanking AlgorithmEngineeringMachine LearningLearning To RankImplicit FeedbackMultimodal Sentiment AnalysisVisual DimensionsText MiningInformation RetrievalData SciencePreference LearningAffective ComputingTemporal InformationPredictive AnalyticsKnowledge DiscoveryConversational Recommender SystemComputer ScienceCold-start ProblemDeep LearningVisual AppearanceCollaborative Filtering
Modern recommender systems model people and items by discovering or `teasing apart' the underlying dimensions that encode the properties of items and users' preferences toward them. Critically, such dimensions are uncovered based on user feedback, often in implicit form (such as purchase histories, browsing logs, etc.); in addition, some recommender systems make use of side information, such as product attributes, temporal information, or review text.However one important feature that is typically ignored by existing personalized recommendation and ranking methods is the visual appearance of the items being considered. In this paper we propose a scalable factorization model to incorporate visual signals into predictors of people's opinions, which we apply to a selection of large, real-world datasets. We make use of visual features extracted from product images using (pre-trained) deep networks, on top of which we learn an additional layer that uncovers the visual dimensions that best explain the variation in people's feedback. This not only leads to significantly more accurate personalized ranking methods, but also helps to alleviate cold start issues, and qualitatively to analyze the visual dimensions that influence people's opinions.
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