Early Stopping for Nonparametric Testing

05/25/2018
by   Meimei Liu, et al.
0

Early stopping of iterative algorithms is an algorithmic regularization method to avoid over-fitting in estimation and classification. In this paper, we show that early stopping can also be applied to obtain the minimax optimal testing in a general non-parametric setup. Specifically, a Wald-type test statistic is obtained based on an iterated estimate produced by functional gradient descent algorithms in a reproducing kernel Hilbert space. A notable contribution is to establish a "sharp" stopping rule: when the number of iterations achieves an optimal order, testing optimality is achievable; otherwise, testing optimality becomes impossible. As a by-product, a similar sharpness result is also derived for minimax optimal estimation under early stopping studied in [11] and [19]. All obtained results hold for various kernel classes, including Sobolev smoothness classes and Gaussian kernel classes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/15/2013

Early stopping and non-parametric regression: An optimal data-dependent stopping rule

The strategy of early stopping is a regularization technique based on ch...
research
01/09/2020

Adaptive Stopping Rule for Kernel-based Gradient Descent Algorithms

In this paper, we propose an adaptive stopping rule for kernel-based gra...
research
07/05/2017

Early stopping for kernel boosting algorithms: A general analysis with localized complexities

Early stopping of iterative algorithms is a widely-used form of regulari...
research
07/14/2020

Early stopping and polynomial smoothing in regression with reproducing kernels

In this paper we study the problem of early stopping for iterative learn...
research
01/25/2015

Randomized sketches for kernels: Fast and optimal non-parametric regression

Kernel ridge regression (KRR) is a standard method for performing non-pa...
research
03/27/2023

On the optimality of misspecified spectral algorithms

In the misspecified spectral algorithms problem, researchers usually ass...
research
09/30/2019

Smoothed residual stopping for statistical inverse problems via truncated SVD estimation

This work examines under what circumstances adaptivity for truncated SVD...

Please sign up or login with your details

Forgot password? Click here to reset