Gradient-based Simulation Optimization Algorithms via Multi-Resolution System Approximations

52 Pages Posted: 18 Feb 2021 Last revised: 9 Jan 2023

See all articles by Jingxu Xu

Jingxu Xu

University of California, Berkeley, Department of Industrial Engineering and Operations Research

Zeyu Zheng

University of California, Berkeley

Date Written: October 18, 2021

Abstract

We propose gradient-based simulation-optimization algorithms to optimize systems that have complicated stochastic structure. The presence of complicated stochastic structure, such as the involvement of infinite-dimensional continuous-time stochastic processes, may cause the exact simulation of the system to be costly or even impossible. On the other hand, for a complicated system, one can sometimes construct a sequence of approximations at different resolutions, where the sequence has finer and finer approximation resolution but higher and higher cost to simulate. With the goal of optimizing the complicated system, we propose algorithms that strategically use the approximations with increasing resolution and higher simulation cost to construct stochastic gradients and perform gradient search in the decision space. To accommodate scenarios where approximations cause discontinuities and lead path-wise gradient estimators to have an uncontrollable bias, stochastic gradients for the proposed algorithms are constructed through finite difference. As a theory support, we prove algorithm convergence, convergence rate, and optimality of algorithm design under the assumption that the objective function for the complicated system is strongly convex, while no such assumptions are imposed on the approximations of the complicated system. We then present a multilevel version of the proposed algorithms to further improve convergence rates, when in addition the sequence of approximations can be naturally coupled.

Keywords: Simulation optimization, gradient-based algorithms, approximated systems, convergence rate, multi-level algorithms

Suggested Citation

Xu, Jingxu and Zheng, Zeyu, Gradient-based Simulation Optimization Algorithms via Multi-Resolution System Approximations (October 18, 2021). Available at SSRN: https://ssrn.com/abstract=3757179 or http://dx.doi.org/10.2139/ssrn.3757179

Jingxu Xu

University of California, Berkeley, Department of Industrial Engineering and Operations Research ( email )

4141 Etcheverry Hall
Berkeley, CA 94720-1777
United States

Zeyu Zheng (Contact Author)

University of California, Berkeley ( email )

4125 Etcheverry Hall
Berkeley, CA 94720
United States

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