The Handbook of Simulation Optimization presents an overview of the state of the art of simulation optimization, providing a survey of the most well-established approaches for optimizing stochastic simulation models and a sampling of recent research advances in theory and methodology. Leading contributors cover such topics as discrete optimization via simulation, ranking and selection, efficient simulation budget allocation, random search methods, response surface methodology, stochastic gradient estimation, stochastic approximation, sample average approximation, stochastic constraints, variance reduction techniques, model-based stochastic search methods and Markov decision processes.
This single volume should serve as a reference for those already in the field and as a means for those new to the field for understanding and applying the main approaches. The intended audience includes researchers, practitioners and graduate students in the business/engineering fields of operations research, management science, operations management and stochastic control, as well as in economics/finance and computer science.
Author(s): Michael C Fu (eds.)
Series: International Series in Operations Research & Management Science 216
Edition: 1
Publisher: Springer-Verlag New York
Year: 2015
Language: English
Pages: 387
City: New York
Tags: Operation Research/Decision Theory; Simulation and Modeling; Operations Research, Management Science; Game Theory/Mathematical Methods
Front Matter....Pages i-xvi
Overview of the Handbook....Pages 1-7
Discrete Optimization via Simulation....Pages 9-44
Ranking and Selection: Efficient Simulation Budget Allocation....Pages 45-80
Response Surface Methodology....Pages 81-104
Stochastic Gradient Estimation....Pages 105-147
An Overview of Stochastic Approximation....Pages 149-178
Stochastic Approximation Methods and Their Finite-Time Convergence Properties....Pages 179-206
A Guide to Sample Average Approximation....Pages 207-243
Stochastic Constraints and Variance Reduction Techniques....Pages 245-276
A Review of Random Search Methods....Pages 277-292
Stochastic Adaptive Search Methods: Theory and Implementation....Pages 293-318
Model-Based Stochastic Search Methods....Pages 319-340
Solving Markov Decision Processes via Simulation....Pages 341-379
Back Matter....Pages 381-387