PrivMVMF: Privacy-Preserving Multi-View Matrix Factorization for Recommender Systems

September 29, 2022 Β· Declared Dead Β· πŸ› IEEE Transactions on Artificial Intelligence

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Authors Peihua Mai, Yan Pang arXiv ID 2210.07775 Category cs.IR: Information Retrieval Cross-listed cs.AI, cs.LG Citations 12 Venue IEEE Transactions on Artificial Intelligence Last Checked 4 months ago
Abstract
With an increasing focus on data privacy, there have been pilot studies on recommender systems in a federated learning (FL) framework, where multiple parties collaboratively train a model without sharing their data. Most of these studies assume that the conventional FL framework can fully protect user privacy. However, there are serious privacy risks in matrix factorization in federated recommender systems based on our study. This paper first provides a rigorous theoretical analysis of the server reconstruction attack in four scenarios in federated recommender systems, followed by comprehensive experiments. The empirical results demonstrate that the FL server could infer users' information with accuracy >80% based on the uploaded gradients from FL nodes. The robustness analysis suggests that our reconstruction attack analysis outperforms the random guess by >30% under Laplace noises with b no larger than 0.5 for all scenarios. Then, the paper proposes a new privacy-preserving framework based on homomorphic encryption, Privacy-Preserving Multi-View Matrix Factorization (PrivMVMF), to enhance user data privacy protection in federated recommender systems. The proposed PrivMVMF is successfully implemented and tested thoroughly with the MovieLens dataset.
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