Data Farming the Parameters of Simulation-Optimization Solvers

Author:

Shashaani Sara1ORCID,Eckman David2ORCID,Sanchez Susan3ORCID

Affiliation:

1. Industrial and Systems Engineering, North Carolina State University at Raleigh, Raleigh, United States

2. Texas A&M University College Station, College Station, United States

3. Operations Research, Naval Postgraduate School, Monterey, United States

Abstract

The performance of a simulation-optimization algorithm, a.k.a. a solver, depends on its parameter settings. Much of the research to date has focused on how a solver’s parameters affect its convergence and other asymptotic behavior. While these results are important for providing a theoretical understanding of a solver, they can be of limited utility to a user who must set up and run the solver on a particular problem. When running a solver in practice, good finite-time performance is paramount. In this article, we explore the relationship between a solver’s parameter settings and its finite-time performance by adopting a data farming approach. The approach involves conducting and analyzing the outputs of a designed experiment wherein the factors are the solver’s parameters and the responses are assorted performance metrics measuring the solver’s speed and solution quality over time. We demonstrate this approach with a study of the ASTRO-DF solver when solving a stochastic activity network problem and an inventory control problem. Through these examples, we show that how some of the solver’s parameters are set greatly affects its ability to achieve rapid, reliable progress and gain insights into the solver’s inner workings. We discuss the implications of using this framework for tuning solver parameters, as well as for addressing related questions of interest to solver specialists and generalists.

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

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