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Practical and Secure Federated Recommendation with Personalized Masks

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arxiv 2109.02464 v2 pith:W32A5RSY submitted 2021-08-18 cs.IR cs.AIcs.CRcs.LG

Practical and Secure Federated Recommendation with Personalized Masks

classification cs.IR cs.AIcs.CRcs.LG
keywords datafederatedpersonalizedmaskrecommendersystemseffectivenessefficiency
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Federated recommendation addresses the data silo and privacy problems altogether for recommender systems. Current federated recommender systems mainly utilize cryptographic or obfuscation methods to protect the original ratings from leakage. However, the former comes with extra communication and computation costs, and the latter damages model accuracy. Neither of them could simultaneously satisfy the real-time feedback and accurate personalization requirements of recommender systems. In this paper, we proposed federated masked matrix factorization (FedMMF) to protect the data privacy in federated recommender systems without sacrificing efficiency and effectiveness. In more details, we introduce the new idea of personalized mask generated only from local data and apply it in FedMMF. On the one hand, personalized mask offers protection for participants' private data without effectiveness loss. On the other hand, combined with the adaptive secure aggregation protocol, personalized mask could further improve efficiency. Theoretically, we provide security analysis for personalized mask. Empirically, we also show the superiority of the designed model on different real-world data sets.

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