ICML2024

Barrier Algorithms for Constrained Non-Convex Optimization

Pavel E. Dvurechensky, Mathias Staudigl

3 citations

Abstract

In this paper we theoretically show that interior-point methods based on self-concordant barriers possess favorable global complexity beyond their standard application area of convex optimization. To do that we propose first- and second-order methods for non-convex optimization problems with general convex set constraints and linear constraints. Our methods attain a suitably defined class of approximate first- or second-order KKT points with the worst-case iteration complexity similar to unconstrained problems, namely O(ε2)O(\varepsilon^{-2}) (first-order) and O(ε3/2)O(\varepsilon^{-3/2}) (second-order), respectively.