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Book Cover
Book
Author Gosavi, Abhijit.

Title Simulation-based optimization : parametric optimization techniques and reinforcement learning / Abhijit Gosavi
Published Boston, Mass. ; London : Kluwer Academic Publishers, 2003

Copies

Location Call no. Vol. Availability
 MELB  519.2 Gos/Sbo  AVAILABLE
Description xxvii, 554 pages : illustrations ; 24 cm
Series Operations research/computer science interfaces series
Operations research/computer science interfaces series.
Contents 1. Background -- 2. Notation -- 3. Probability Theory: A Refresher -- 4. Basic Concepts Underlying Simulation -- 5. Simulation Optimization: An Overview -- 6. Response Surfaces and Neural Nets -- 7. Parametric Optimization -- 8. Dynamic Programming -- 9. Reinforcement Learning -- 10. Markov Chain Automata Theory -- 11. Convergence: Background Material -- 12. Convergence: Parametric Optimization -- 13. Convergence: Control Optimization -- 14. Case Studies -- 15. Codes -- 16. Concluding Remarks
Summary "Simulation-Based Optimization: Parametric Optimization Techniques and Reinforcement Learning introduces the evolving area of simulation-based optimization. Since it became possible to analyze random systems using computers, scientists and engineers have sought the means to optimize systems using simulation models. Only recently, however, has this objective had success in practice. Cutting-edge work in computational operations research, including non-linear programming (simultaneous perturbation), dynamic programming (reinforcement learning), and game theory (learning automata) has made it possible to use simulation in conjunction with optimization techniques. As a result, this research has given simulation added dimensions and power that it did not have in the recent past." "The book's objective is two-fold: (1) It examines the mathematical governing principles of simulation-based optimization, thereby providing the reader with the ability to model relevant real-life problems using these techniques. (2) It outlines the computational technology underlying these methods. Taken together, these two aspects demonstrate that the mathematical and computational methods discussed in this book do work." "Broadly speaking, the book has two parts: (1) parametric (static) optimization and (2) control (dynamic) optimization. Some of the book's special features are: an accessible introduction to reinforcement learning and parametric-optimization techniques; a step-by-step description of several algorithms of simulation-based optimization; a clear and simple introduction to the methodology of neural networks; a gentle introduction to convergence analysis of some of the methods enumerated above; and Computer programs for many algorithms of simulation-based optimization." "This book is written for students and researchers in the fields of engineering (electrical, industrial and computer), computer science, operations research, management science, and applied mathematics."--BOOK JACKET.000
Bibliography Includes bibliographical references and index
Subject Probabilities.
Mathematical optimization.
LC no. 2003048844
ISBN 1402074549 :