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(Ebook) Approximate iterative algorithms by Anthony Almudevar ISBN 9780203503416, 9780415621540, 9781306501798, 0203503414, 0415621542, 1306501792

  • SKU: EBN-4920896
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Authors:Anthony Almudevar
Pages:371 pages.
Year:2014
Editon:1
Publisher:CRC Press/Balkema
Language:english
File Size:3.17 MB
Format:pdf
ISBNS:9780203503416, 9780415621540, 9781306501798, 0203503414, 0415621542, 1306501792
Categories: Ebooks

Product desciption

(Ebook) Approximate iterative algorithms by Anthony Almudevar ISBN 9780203503416, 9780415621540, 9781306501798, 0203503414, 0415621542, 1306501792

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 algorithms. Techniques of functional analysis are used to derive analytical relationships between approximation methods and convergence properties for general classes of algorithms. This work provides the necessary background in functional analysis and probability theory. Extensive applications to Markov decision processes are presented.

This volume is intended for mathematicians, engineers and computer scientists, who work on learning processes in numerical analysis and are involved with optimization, optimal control, decision analysis and machine learning.

*Free conversion of into popular formats such as PDF, DOCX, DOC, AZW, EPUB, and MOBI after payment.

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