On Suboptimality of Least Squares with Application to Estimation of Convex Bodies
Gil Kur, Alexander Rakhlin, Adityanand Guntuboyina
Subject areas: Regression, Excess risk bounds and generalization error bounds, High-dimensional statistics, Loss functions
Presented in: Session 2B, Session 4E
[Zoom link for poster in Session 2B], [Zoom link for poster in Session 4E]
Abstract:
We develop a technique for establishing lower bounds on the sample complexity of Least Squares (or, Empirical Risk Minimization) for large classes of functions. As an application, we settle an open problem regarding optimality of Least Squares in estimating a convex set from noisy support function measurements in dimension $d\geq 6$. Specifically, we establish that Least Squares is mimimax sub-optimal, and achieves a rate of $\tilde{\Theta}_d(n^{-2/(d-1)})$ whereas the minimax rate is $\Theta_d(n^{-4/(d+3)})$.