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Adversarial robust weighted Huber regression

Authors :
Sasai, Takeyuki
Fujisawa, Hironori
Publication Year :
2021

Abstract

We consider a robust estimation of linear regression coefficients. In this note, we focus on the case where the covariates are sampled from an $L$-subGaussian distribution with unknown covariance, the noises are sampled from a distribution with a bounded absolute moment and both covariates and noises may be contaminated by an adversary. We derive an estimation error bound, which depends on the stable rank and the condition number of the covariance matrix of covariates with a polynomial computational complexity of estimation.<br />Comment: The case of sparse coefficients is investigated in arXiv:2208.11592. This manuscript will not be submitted for publications

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2102.11120
Document Type :
Working Paper