You are here

Back to top

Foundations of Mathematical Optimization: Convex Analysis Without Linearity (Mathematics and Its Applications #388) (Paperback)

Foundations of Mathematical Optimization: Convex Analysis Without Linearity (Mathematics and Its Applications #388) Cover Image
$186.99
Usually Ships in 1-5 Days

Description


Many books on optimization consider only finite dimensional spaces. This volume is unique in its emphasis: the first three chapters develop optimization in spaces without linear structure, and the analog of convex analysis is constructed for this case. Many new results have been proved specially for this publication. In the following chapters optimization in infinite topological and normed vector spaces is considered. The novelty consists in using the drop property for weak well-posedness of linear problems in Banach spaces and in a unified approach (by means of the Dolecki approximation) to necessary conditions of optimality. The method of reduction of constraints for sufficient conditions of optimality is presented. The book contains an introduction to non-differentiable and vector optimization.
Audience: This volume will be of interest to mathematicians, engineers, and economists working in mathematical optimization.

Product Details
ISBN: 9789048148004
ISBN-10: 9048148006
Publisher: Springer
Publication Date: December 7th, 2010
Pages: 585
Language: English
Series: Mathematics and Its Applications