DPLCF
Chen Gao, Chao Huang, Dongsheng Lin, Depeng Jin, Yong Li
Abstract
Most existing recommender systems leverage users' complete original behavioral logs, which are collected from mobile devices and stored by the service provider and further fed into recommendation models. This may lead to a high risk of privacy leakage since the recommendation service provider may be trustless. Despite many research efforts on privacy-aware recommendation, the problem of building an effective recommender system completely preserving user privacy is still open.
Topics & Concepts
Computer scienceRecommender systemLeverage (statistics)Service providerInternet privacyWorld Wide WebMobile deviceInformation privacyComputer securityService (business)BusinessArtificial intelligenceMarketingPrivacy-Preserving Technologies in DataRecommender Systems and TechniquesPrivacy, Security, and Data Protection