Local Differentially Private Matrix Factorization with MoG for Recommendations - Data and Applications Security and Privacy XXXIV
Conference Papers Year : 2020

Local Differentially Private Matrix Factorization with MoG for Recommendations

Abstract

Unethical data aggregation practices of many recommendation systems have raised privacy concerns among users. Local differential privacy (LDP) based recommendation systems address this problem by perturbing a user’s original data locally in their device before sending it to the data aggregator (DA). The DA performs recommendations over perturbed data which causes substantial prediction error. To tackle privacy and utility issues with untrustworthy DA in recommendation systems, we propose a novel LDP matrix factorization (MF) with mixture of Gaussian (MoG). We use a Bounded Laplace mechanism (BLP) to perturb user’s original ratings locally. BLP restricts the perturbed ratings to a predefined output domain, thus reducing the level of noise aggregated at DA. The MoG method estimates the noise added to the original ratings, which further improves the prediction accuracy without violating the principles of differential privacy (DP). With Movielens and Jester datasets, we demonstrate that our method offers a higher prediction accuracy under strong privacy protection compared to existing LDP recommendation methods.
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Dates and versions

hal-03243637 , version 1 (31-05-2021)

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Jeyamohan Neera, Xiaomin Chen, Nauman Aslam, Zhan Shu. Local Differentially Private Matrix Factorization with MoG for Recommendations. 34th IFIP Annual Conference on Data and Applications Security and Privacy (DBSec), Jun 2020, Regensburg, Germany. pp.208-220, ⟨10.1007/978-3-030-49669-2_12⟩. ⟨hal-03243637⟩
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