<p><P><STRONG>Simulation-Based Optimization: Parametric Optimization Techniques and Reinforcement Learning</STRONG> introduces the evolving area of simulation-based optimization. </P><P>The book's objective is two-fold: (1) It examines the mathematical governing principles of simulation-based optimi
Simulation-Based Optimization: Parametric Optimization Techniques and Reinforcement Learning
β Scribed by Abhijit Gosavi (auth.)
- Publisher
- Springer US
- Year
- 2015
- Tongue
- English
- Leaves
- 530
- Series
- Operations Research/Computer Science Interfaces Series 55
- Edition
- 2
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Simulation-Based Optimization: Parametric Optimization Techniques and Reinforcement Learning introduce the evolving area of static and dynamic simulation-based optimization. Covered in detail are model-free optimization techniques β especially designed for those discrete-event, stochastic systems which can be simulated but whose analytical models are difficult to find in closed mathematical forms.
Key features of this revised and improved Second Edition include:
Β· Extensive coverage, via step-by-step recipes, of powerful new algorithms for static simulation optimization, including simultaneous perturbation, backtracking adaptive search and nested partitions, in addition to traditional methods, such as response surfaces, Nelder-Mead search and meta-heuristics (simulated annealing, tabu search, and genetic algorithms)
Β· Detailed coverage of the Bellman equation framework for Markov Decision Processes (MDPs), along with dynamic programming (value and policy iteration) for discounted, average, and total reward performance metrics
Β· An in-depth consideration of dynamic simulation optimization via temporal differences and Reinforcement Learning: Q-Learning, SARSA, and R-SMART algorithms, and policy search, via API, Q-P-Learning, actor-critics, and learning automata
Β· A special examination of neural-network-based function approximation for Reinforcement Learning, semi-Markov decision processes (SMDPs), finite-horizon problems, two time scales, case studies for industrial tasks, computer codes (placed online) and convergence proofs, via Banach fixed point theory and Ordinary Differential Equations
Themed around three areas in separate sets of chapters β Static Simulation Optimization, Reinforcement Learning and Convergence Analysisβ this book is written for researchers and students in the fields of engineering (industrial, systems, electrical and computer), operations research, computer science and applied mathematics.
β¦ Table of Contents
Front Matter....Pages i-xxvi
Background....Pages 1-12
Simulation Basics....Pages 13-27
Simulation-Based Optimization: An Overview....Pages 29-35
Parametric Optimization: Response Surfaces and Neural Networks....Pages 37-69
Parametric Optimization: Stochastic Gradients and Adaptive Search....Pages 71-122
Control Optimization with Stochastic Dynamic Programming....Pages 123-195
Control Optimization with Reinforcement Learning....Pages 197-268
Control Optimization with Stochastic Search....Pages 269-280
Convergence: Background Material....Pages 281-318
Convergence Analysis of Parametric Optimization Methods....Pages 319-350
Convergence Analysis of Control Optimization Methods....Pages 351-450
Case Studies....Pages 451-471
Back Matter....Pages 473-508
β¦ Subjects
Operation Research/Decision Theory; Operations Research, Management Science; Simulation and Modeling
π SIMILAR VOLUMES
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Draft copy of Reinforcement learning and optimal control by Dmitri Bertsekas
<p>This book presents the state of the art in designing high-performance algorithms that combine simulation and optimization in order to solve complex optimization problems in science and industry, problems that involve time-consuming simulations and expensive multi-objective function evaluations. A