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Book Description

A comprehensive account of the theory and application of Monte Carlo methods

Based on years of research in efficient Monte Carlo methods for estimation of rare-event probabilities, counting problems, and combinatorial optimization, Fast Sequential Monte Carlo Methods for Counting and Optimization is a complete illustration of fast sequential Monte Carlo techniques. The book provides an accessible overview of current work in the field of Monte Carlo methods, specifically sequential Monte Carlo techniques, for solving abstract counting and optimization problems.

Written by authorities in the field, the book places emphasis on cross-entropy, minimum cross-entropy, splitting, and stochastic enumeration. Focusing on the concepts and application of Monte Carlo techniques, Fast Sequential Monte Carlo Methods for Counting and Optimization includes:

  • Detailed algorithms needed to practice solving real-world problems

  • Numerous examples with Monte Carlo method produced solutions within the 1-2% limit of relative error

  • A new generic sequential importance sampling algorithm alongside extensive numerical results

  • An appendix focused on review material to provide additional background information

Fast Sequential Monte Carlo Methods for Counting and Optimization is an excellent resource for engineers, computer scientists, mathematicians, statisticians, and readers interested in efficient simulation techniques. The book is also useful for upper-undergraduate and graduate-level courses on Monte Carlo methods.

Table of Contents

  1. Cover
  2. Series
  3. Copyright
  4. Dedication
  5. Chapter 1: Introduction to Monte Carlo Methods
  6. Chapter 2: Cross-Entropy Method
    1. 2.1 Introduction
    2. 2.2 Estimation of Rare-Event Probabilities
    3. 2.3 Cross-Entropy Method forOptimization
    4. 2.4 Continuous Optimization
    5. 2.5 Noisy Optimization
  7. Chapter 3: Minimum Cross-Entropy Method
    1. 3.1 Introduction
    2. 3.2 Classic MinxEnt Method
    3. 3.3 Rare Events and MinxEnt
    4. 3.4 Indicator MinxEnt Method
    5. 3.5 IME Method for Combinatorial Optimization
  8. Chapter 4: Splitting Method for Counting and Optimization
    1. 4.1 Background
    2. 4.2 Quick Glance at the Splitting Method
    3. 4.3 Splitting Algorithm with Fixed Levels
    4. 4.4 Adaptive Splitting Algorithm
    5. 4.5 Sampling Uniformly on Discrete Regions
    6. 4.6 Splitting Algorithm for Combinatorial Optimization
    7. 4.7 Enhanced Splitting Method for Counting
    8. 4.8 Application of Splitting to Reliability Models
    9. 4.9 Numerical Results with the Splitting Algorithms
    10. 4.10 Appendix: Gibbs Sampler
  9. Chapter 5: Stochastic Enumeration Method
    1. 5.1 Introduction
    2. 5.2 OSLA Method and Its Extensions
    3. 5.3 SE Method
    4. 5.4 Applications of SE
    5. 5.5 Numerical Results
  10. Appendix A: Additional Topics
    1. A.1 Combinatorial Problems
    2. A.2 Information
    3. A.3 Efficiency of Estimators
  11. Bibliography
  12. Abbreviations and Acronyms
  13. List of Symbols
  14. Index
  15. Series
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