Disentangled Representation for Diversified Recommendations
Xiaoying Zhang, Hongning Wang, Hang Li
Abstract
Accuracy and diversity have long been considered to be two conflicting goals for recommendations. We point out, however, that as the diversity is typically measured by certain pre-selected item attributes, e.g., category as the most popularly employed one, improved diversity can be achieved without sacrificing recommendation accuracy, as long as the diversification respects the user's preference about the pre-selected attributes. This calls for a fine-grained understanding of a user's preferences over items, where one needs to recognize the user's choice is driven by the quality of the item itself, or the pre-selected attributes of the item.
Topics & Concepts
Diversification (marketing strategy)Diversity (politics)Computer sciencePreferencePoint (geometry)Quality (philosophy)Representation (politics)Information retrievalRecommender systemArtificial intelligenceStatisticsMathematicsMarketingBusinessAnthropologyPoliticsSociologyPhilosophyPolitical scienceGeometryEpistemologyLawRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchConsumer Market Behavior and Pricing