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RS-Reg: Probabilistic and Robust Certified Regression Through Randomized Smoothing

2024-05-14Code Available0· sign in to hype

Aref Miri Rekavandi, Olga Ohrimenko, Benjamin I. P. Rubinstein

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Abstract

Randomized smoothing has shown promising certified robustness against adversaries in classification tasks. Despite such success with only zeroth-order access to base models, randomized smoothing has not been extended to a general form of regression. By defining robustness in regression tasks flexibly through probabilities, we demonstrate how to establish upper bounds on input data point perturbation (using the _2 norm) for a user-specified probability of observing valid outputs. Furthermore, we showcase the asymptotic property of a basic averaging function in scenarios where the regression model operates without any constraint. We then derive a certified upper bound of the input perturbations when dealing with a family of regression models where the outputs are bounded. Our simulations verify the validity of the theoretical results and reveal the advantages and limitations of simple smoothing functions, i.e., averaging, in regression tasks. The code is publicly available at https://github.com/arekavandi/Certified_Robust_Regression.

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