UID:
almahu_9948254154402882
Format:
XI, 360 p. 150 illus.
,
online resource.
Edition:
1st ed. 2020.
ISBN:
9783030378226
Series Statement:
Springer Optimization and Its Applications, 155
Content:
This book studies approximate solutions of optimization problems in the presence of computational errors. It contains a number of results on the convergence behavior of algorithms in a Hilbert space, which are well known as important tools for solving optimization problems. The research presented continues from the author's (c) 2016 book Numerical Optimization with Computational Errors. Both books study algorithms taking into account computational errors which are always present in practice. The main goal is, for a known computational error, to obtain the approximate solution and the number of iterations needed. The discussion takes into consideration that for every algorithm, its iteration consists of several steps; computational errors for various steps are generally different. This fact, which was not accounted for in the previous book, is indeed important in practice. For example, the subgradient projection algorithm consists of two steps-a calculation of a subgradient of the objective function and a calculation of a projection on the feasible set. In each of these two steps there is a computational error and these two computational errors are generally different. The book is of interest for researchers and engineers working in optimization. It also can be useful in preparation courses for graduate students. The main feature of the book will appeal specifically to researchers and engineers working in optimization as well as to experts in applications of optimization to engineering and economics.
Note:
Preface -- 1. Introduction -- 2. Subgradient Projection Algorithm -- 3. The Mirror Descent Algorithm -- 4. Gradient Algorithm with a Smooth Objective Function -- 5. An Extension of the Gradient Algorithm -- 6. Continuous Subgradient Method -- 7. An optimization problems with a composite objective function -- 8. A zero-sum game with two-players -- 9. PDA-based method for convex optimization -- 10 Minimization of quasiconvex functions.-11. Minimization of sharp weakly convex functions.-12. A Projected Subgradient Method for Nonsmooth Problems -- References. -Index. .
In:
Springer eBooks
Additional Edition:
Printed edition: ISBN 9783030378219
Additional Edition:
Printed edition: ISBN 9783030378233
Additional Edition:
Printed edition: ISBN 9783030378240
Language:
English
DOI:
10.1007/978-3-030-37822-6
URL:
https://doi.org/10.1007/978-3-030-37822-6
Bookmarklink