Random Walks with Erasure: Diversifying Personalized Recommendations on Social and Information Networks
Bibek Paudel, Abraham Bernstein
Abstract
Most existing personalization systems promote items that match a user’s previous choices or those that are popular among similar users. This results in recommendations that are highly similar to the ones users are already exposed to, resulting in their isolation inside familiar but insulated information silos. In this context, we develop a novel recommendation framework with a goal of improving information diversity using a modified random walk exploration of the user-item graph. We focus on the problem of political content recommendation, while addressing a general problem applicable to personalization tasks in other social and information networks.
Topics & Concepts
PersonalizationComputer scienceFocus (optics)Diversity (politics)Recommender systemRandom walkData scienceSocial network (sociolinguistics)Isolation (microbiology)World Wide WebInformation cascadeInformation systemKey (lock)Information technologyInternet privacyArtificial intelligenceSocial relationshipKnowledge managementSocial network analysisSocial mediaInformation retrievalHomophilyRecommender Systems and TechniquesCaching and Content DeliverySocial Media and Politics