NeurIPS2020

Bayesian Optimization of Risk Measures

Sait Cakmak, Raul Astudillo, Peter I. Frazier, Enlu Zhou

被引用 61 次

摘要

We consider Bayesian optimization of objective functions of the form ρ[F(x,W)]\rho[ F(x, W) ], where FF is a black-box expensive-to-evaluate function and ρ\rho denotes either the VaR or CVaR risk measure, computed with respect to the randomness induced by the environmental random variable WW. Such problems arise in decision making under uncertainty, such as in portfolio optimization and robust systems design. We propose a family of novel Bayesian optimization algorithms that exploit the structure of the objective function to substantially improve sampling efficiency. Instead of modeling the objective function directly as is typical in Bayesian optimization, these algorithms model FF as a Gaussian process, and use the implied posterior on the objective function to decide which points to evaluate. We demonstrate the effectiveness of our approach in a variety of numerical experiments.