Conjugate Gradient Algorithms in Nonconvex Optimization / Edition 1

Conjugate Gradient Algorithms in Nonconvex Optimization / Edition 1

by Radoslaw Pytlak
ISBN-10:
3642099254
ISBN-13:
9783642099250
Pub. Date:
11/19/2010
Publisher:
Springer Berlin Heidelberg
ISBN-10:
3642099254
ISBN-13:
9783642099250
Pub. Date:
11/19/2010
Publisher:
Springer Berlin Heidelberg
Conjugate Gradient Algorithms in Nonconvex Optimization / Edition 1

Conjugate Gradient Algorithms in Nonconvex Optimization / Edition 1

by Radoslaw Pytlak
$169.99 Current price is , Original price is $169.99. You
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Overview

This up-to-date book is on algorithms for large-scale unconstrained and bound constrained optimization. Optimization techniques are shown from a conjugate gradient algorithm perspective.

Large part of the book is devoted to preconditioned conjugate gradient algorithms. In particular memoryless and limited memory quasi-Newton algorithms are presented and numerically compared to standard conjugate gradient algorithms.

The special attention is paid to the methods of shortest residuals developed by the author. Several effective optimization techniques based on these methods are presented.

Because of the emphasis on practical methods, as well as rigorous mathematical treatment of their convergence analysis, the book is aimed at a wide audience. It can be used by researches in optimization, graduate students in operations research, engineering, mathematics and computer science. Practitioners can benefit from numerous numerical comparisons of professional optimization codes discussed in the book.


Product Details

ISBN-13: 9783642099250
Publisher: Springer Berlin Heidelberg
Publication date: 11/19/2010
Series: Nonconvex Optimization and Its Applications , #89
Edition description: Softcover reprint of hardcover 1st ed. 2009
Pages: 478
Product dimensions: 6.10(w) x 9.25(h) x 0.04(d)

Table of Contents

Conjugate Direction Methods for Quadratic Problems.- Conjugate Gradient Methods for Nonconvex Problems.- Memoryless Quasi-Newton Methods.- Preconditioned Conjugate Gradient Algorithms.- Limited Memory Quasi-Newton Algorithms.- The Method of Shortest Residuals and Nondifferentiable Optimization.- The Method of Shortest Residuals for Differentiable Problems.- The Preconditioned Shortest Residuals Algorithm.- Optimization on a Polyhedron.- Conjugate Gradient Algorithms for Problems with Box Constraints.- Preconditioned Conjugate Gradient Algorithms for Problems with Box Constraints.- Preconditioned Conjugate Gradient Based Reduced-Hessian Methods.
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