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Differentially Private 1\ell_1-norm Linear Regression with Heavy-tailed Data

International Symposium on Information Theory (ISIT), 2022
Main:5 Pages
Bibliography:1 Pages
Appendix:3 Pages
Abstract

We study the problem of Differentially Private Stochastic Convex Optimization (DP-SCO) with heavy-tailed data. Specifically, we focus on the 1\ell_1-norm linear regression in the ϵ\epsilon-DP model. While most of the previous work focuses on the case where the loss function is Lipschitz, here we only need to assume the variates has bounded moments. Firstly, we study the case where the 2\ell_2 norm of data has bounded second order moment. We propose an algorithm which is based on the exponential mechanism and show that it is possible to achieve an upper bound of O~(dnϵ)\tilde{O}(\sqrt{\frac{d}{n\epsilon}}) (with high probability). Next, we relax the assumption to bounded θ\theta-th order moment with some θ(1,2)\theta\in (1, 2) and show that it is possible to achieve an upper bound of O~((dnϵ)θ1θ)\tilde{O}(({\frac{d}{n\epsilon}})^\frac{\theta-1}{\theta}). Our algorithms can also be extended to more relaxed cases where only each coordinate of the data has bounded moments, and we can get an upper bound of O~(dnϵ)\tilde{O}({\frac{d}{\sqrt{n\epsilon}}}) and O~(d(nϵ)θ1θ)\tilde{O}({\frac{d}{({n\epsilon})^\frac{\theta-1}{\theta}}}) in the second and θ\theta-th moment case respectively.

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