Feb. 7, 2024, 5:44 a.m. | Saptarshi Roy Zehua Wang Ambuj Tewari

cs.LG updates on arXiv.org arxiv.org

We consider the problem of model selection in a high-dimensional sparse linear regression model under privacy constraints. We propose a differentially private best subset selection method with strong utility properties by adopting the well-known exponential mechanism for selecting the best model. We propose an efficient Metropolis-Hastings algorithm and establish that it enjoys polynomial mixing time to its stationary distribution. Furthermore, we also establish approximate differential privacy for the final estimates of the Metropolis-Hastings random walk using its mixing property. Finally, …

algorithm complexity computational constraints cs.lg linear linear regression metropolis model selection privacy regression stat.co stat.me stat.ml utility

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