From Majorization to Interpolation: Distributionally Robust Learning using Kernel Smoothing

02/16/2021
by   Jia-Jie Zhu, et al.
5

We study the function approximation aspect of distributionally robust optimization (DRO) based on probability metrics, such as the Wasserstein and the maximum mean discrepancy. Our analysis leverages the insight that existing DRO paradigms hinge on function majorants such as the Moreau-Yosida regularization (supremal convolution). Deviating from those, this paper instead proposes robust learning algorithms based on smooth function approximation and interpolation. Our methods are simple in forms and apply to general loss functions without knowing functional norms a priori. Furthermore, we analyze the DRO risk bound decomposition by leveraging smooth function approximators and the convergence rate for empirical kernel mean embedding.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/11/2021

From Smooth Wasserstein Distance to Dual Sobolev Norm: Empirical Approximation and Statistical Applications

Statistical distances, i.e., discrepancy measures between probability di...
research
08/11/2023

Doubling the rate – improved error bounds for orthogonal projection in Hilbert spaces

Convergence rates for L_2 approximation in a Hilbert space H are a centr...
research
05/27/2019

Distributionally Robust Optimization and Generalization in Kernel Methods

Distributionally robust optimization (DRO) has attracted attention in ma...
research
10/13/2022

Variance-Aware Estimation of Kernel Mean Embedding

An important feature of kernel mean embeddings (KME) is that the rate of...
research
12/04/2019

A Unified Switching System Perspective and O.D.E. Analysis of Q-Learning Algorithms

In this paper, we introduce a unified framework for analyzing a large fa...
research
04/24/2021

A Class of Dimensionality-free Metrics for the Convergence of Empirical Measures

This paper concerns the convergence of empirical measures in high dimens...
research
09/29/2020

A Framework of Learning Through Empirical Gain Maximization

We develop in this paper a framework of empirical gain maximization (EGM...

Please sign up or login with your details

Forgot password? Click here to reset