Algorithms of Robust Stochastic Optimization Based on Mirror Descent Method


Cite item

Full Text

Open Access Open Access
Restricted Access Access granted
Restricted Access Subscription Access

Abstract

We propose an approach to the construction of robust non-Euclidean iterative algorithms by convex composite stochastic optimization based on truncation of stochastic gradients. For such algorithms, we establish sub-Gaussian confidence bounds under weak assumptions about the tails of the noise distribution in convex and strongly convex settings. Robust estimates of the accuracy of general stochastic algorithms are also proposed.

About the authors

A. V. Nazin

Trapeznikov Institute of Control Sciences

Author for correspondence.
Email: anazine@ipu.ru
Russian Federation, Moscow

A. S. Nemirovsky

Georgia Institute of Technology

Author for correspondence.
Email: nemirovs@isye.gatech.edu
United States, Atlanta, Georgia

A. B. Tsybakov

CREST, ENSAE

Author for correspondence.
Email: alexandre.tsybakov@ensae.fr
France, Paris

A. B. Juditsky

Université Grenoble Alpes

Author for correspondence.
Email: anatoli.juditsky@univ-grenoble-alpes.fr
France, Grenoble

Supplementary files

Supplementary Files
Action
1. JATS XML

Copyright (c) 2019 Pleiades Publishing, Inc.