Approximate Iterative Algorithms
Iterative algorithms often rely on approximate evaluation techniques, which may include statistical estimation, computer simulation or functional approximation. This volume presents methods for the study of approximate iterative algorithms, providing tools for the derivation of error bounds and convergence rates, and for the optimal design of such
1133035188
Approximate Iterative Algorithms
Iterative algorithms often rely on approximate evaluation techniques, which may include statistical estimation, computer simulation or functional approximation. This volume presents methods for the study of approximate iterative algorithms, providing tools for the derivation of error bounds and convergence rates, and for the optimal design of such
86.99 In Stock
Approximate Iterative Algorithms

Approximate Iterative Algorithms

by Anthony Louis Almudevar
Approximate Iterative Algorithms

Approximate Iterative Algorithms

by Anthony Louis Almudevar

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$86.99 

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Overview

Iterative algorithms often rely on approximate evaluation techniques, which may include statistical estimation, computer simulation or functional approximation. This volume presents methods for the study of approximate iterative algorithms, providing tools for the derivation of error bounds and convergence rates, and for the optimal design of such

Product Details

ISBN-13: 9781134617470
Publisher: CRC Press
Publication date: 02/18/2014
Sold by: Barnes & Noble
Format: eBook
Pages: 372
File size: 2 MB

About the Author

Dr. Almudevar was born in Halifax and raised in Ontario, Canada. He completed a PhD in Statistics at the University of Toronto, and is currently a faculty member in the Department of Biostatistics and Computational Biology at the University of Rochester. He has a wide range of interests, which include biological network modeling, analysis of genetic data, immunological modeling and clinical applications of technological home monitoring. He has a more general interest in optimization and control theory, with an emphasis on the computational issues associated with Markov decision processes.

Table of Contents

1. Introduction. PART I Mathematical background: 2. Real analysis and linear algebra 3. Background – measure theory 4. Background – probability theory 5. Background – stochastic processes 6. Functional analysis 7. Fixed point equations 8. The distribution of a maximum. PART II General theory of approximate iterative algorithms: 9. Background – linear convergence 10. A general theory of approximate iterative algorithms (AIA) 11. Selection of approximation schedules for coarse-to-fine AIAs. PART III Application to Markov decision processes: 12. Markov decision processes (MDP) – background 13. Markov decision processes – value iteration 14. Model approximation in dynamic programming – general theory 15. Sampling based approximation methods 16. Approximate value iteration by truncation 17. Grid approximations of MDPs with continuous state/action spaces 18. Adaptive control of MDPs.
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