NeurIPS2023
Optimal Excess Risk Bounds for Empirical Risk Minimization on p-Norm Linear Regression
Ayoub El Hanchi, Murat A. Erdogdu
2 citations
Abstract
We study the performance of empirical risk minimization on the -norm linear regression problem for . We show that, in the realizable case, under no moment assumptions, and up to a distribution-dependent constant, samples are enough to exactly recover the target. Otherwise, for , and under weak moment assumptions on the target and the covariates, we prove a high probability excess risk bound on the empirical risk minimizer whose leading term matches, up to a constant that depends only on , the asymptotically exact rate. We extend this result to the case under mild assumptions that guarantee the existence of the Hessian of the risk at its minimizer.