Lipschitz behavior of the robust regularization
Abstract
To minimize or upper-bound the value of a function "robustly", we might instead minimize or upper-bound the "epsilon-robust regularization", defined as the map from a point to the maximum value of the function within an epsilon-radius. This regularization may be easy to compute: convex quadratics lead to semidefinite-representable regularizations, for example, and the spectral radius of a matrix leads to pseudospectral computations. For favorable classes of functions, we show that the robust regularization is Lipschitz around any given point, for all small epsilon > 0, even if the original function is nonlipschitz (like the spectral radius). One such favorable class consists of the semi-algebraic functions. Such functions have graphs that are finite unions of sets defined by finitely-many polynomial inequalities, and are commonly encountered in applications.
Cite
@article{arxiv.0810.0098,
title = {Lipschitz behavior of the robust regularization},
author = {Adrian S. Lewis and C. H. Jeffrey Pang},
journal= {arXiv preprint arXiv:0810.0098},
year = {2010}
}
Comments
32 pages, no figures