Convex Analysis and Global Optimization

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Due to the general complementary convex structure underlying most nonconvex optimization problems encountered in applications, convex analysis plays an essential role in the development of global optimization methods. This book develops a coherent and rigorous theory of deterministic global optimization from this point of view. Part I constitutes an introduction to convex analysis, with an emphasis on concepts, properties and results particularly needed for global optimization, including those pertaining to the complementary convex structure. Part II presents the foundation and application of global search principles such as partitioning and cutting, outer and inner approximation, and decomposition to general global optimization problems and to problems with a low-rank nonconvex structure as well as quadratic problems. Much new material is offered, aside from a rigorous mathematical development.
Audience: The book is written as a text for graduate students in engineering, mathematics, operations research, computer science and other disciplines dealing with optimization theory. It is also addressed to all scientists in various fields who are interested in mathematical optimization.

Author(s): Hoang Tuy (auth.)
Series: Nonconvex Optimization and Its Applications 22
Edition: 1
Publisher: Springer US
Year: 1998

Language: English
Pages: 340
City: Dordrecht; Boston
Tags: Calculus of Variations and Optimal Control; Optimization; Numeric Computing; Mathematical Modeling and Industrial Mathematics; Theory of Computation; Business/Management Science, general

Front Matter....Pages i-xi
Front Matter....Pages 1-1
Convex Sets....Pages 3-40
Convex Functions....Pages 41-81
D.C. Functions and D.C. Sets....Pages 83-105
Front Matter....Pages 107-107
Motivation and Overview....Pages 109-132
Successive Partitioning Methods....Pages 133-176
Outer and Inner Approximation....Pages 177-222
Decomposition....Pages 223-276
Nonconvex Quadratic Programming....Pages 277-318
Back Matter....Pages 319-339