资源论文Differentially Private Matrix Completion Revisited

Differentially Private Matrix Completion Revisited

2020-03-11 | |  76 |   50 |   0

Abstract

We provide the first provably joint differentially private algorithm with formal utility guarantees for the problem of user-level privacy-preserving collaborative filtering. Our algorithm is based on the Frank-Wolfe method, and it consistently estimates the underlying preference matrix as long as the number of users m is 图片.png where n is the number of items, and each user provides her preference for at least 图片.png randomly selected items. Along the way, we provide an optimal differentially private algorithm for singular vector computation, based on the celebrated Oja’s method, that provides significant savings in terms of space and time while operating on sparse matrices. We also empirically evaluate our algorithm on a suite of datasets, and show that it con sistently outperforms the state-of-the-art private algorithms.

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