English

Non-local Optimization: Imposing Structure on Optimization Problems by Relaxation

Optimization and Control 2021-07-27 v3 Neural and Evolutionary Computing Machine Learning

Abstract

In stochastic optimization, particularly in evolutionary computation and reinforcement learning, the optimization of a function f:ΩRf: \Omega \to \mathbb{R} is often addressed through optimizing a so-called relaxation θΘEθ(f)\theta \in \Theta \mapsto \mathbb{E}_\theta(f) of ff, where Θ\Theta resembles the parameters of a family of probability measures on Ω\Omega. We investigate the structure of such relaxations by means of measure theory and Fourier analysis, enabling us to shed light on the success of many associated stochastic optimization methods. The main structural traits we derive and that allow fast and reliable optimization of relaxations are the consistency of optimal values of ff, Lipschitzness of gradients, and convexity. We emphasize settings where ff itself is not differentiable or convex, e.g., in the presence of (stochastic) disturbance.

Keywords

Cite

@article{arxiv.2011.06064,
  title  = {Non-local Optimization: Imposing Structure on Optimization Problems by Relaxation},
  author = {Nils Müller and Tobias Glasmachers},
  journal= {arXiv preprint arXiv:2011.06064},
  year   = {2021}
}

Comments

19 pages, 1 figure, final version