Mathematical Theory of Optimization
β Scribed by Ding-Zhu Du, Panos M. Pardalos, Weili Wu (auth.), Ding-Zhu Du, Panos M. Pardalos, Weili Wu (eds.)
- Publisher
- Springer US
- Year
- 2001
- Tongue
- English
- Leaves
- 276
- Series
- Nonconvex Optimization and Its Applications 56
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Optimization is of central importance in all sciences. Nature inherently seeks optimal solutions. For example, light travels through the "shortest" path and the folded state of a protein corresponds to the structure with the "minimum" potential energy. In combinatorial optimization, there are numerous computationally hard problems arising in real world applications, such as floorplanning in VLSI designs and Steiner trees in communication networks. For these problems, the exact optimal solution is not currently real-time computable. One usually computes an approximate solution with various kinds of heuristics. Recently, many approaches have been developed that link the discrete space of combinatorial optimization to the continuous space of nonlinear optimization through geometric, analytic, and algebraic techniques. Many researchers have found that such approaches lead to very fast and efficient heuristics for solving large problems. Although almost all such heuristics work well in practice there is no solid theoretical analysis, except Karmakar's algorithm for linear programming. With this situation in mind, we decided to teach a seminar on nonlinear optimization with emphasis on its mathematical foundations. This book is the result of that seminar. During the last decades many textbooks and monographs in nonlinear optimization have been published. Why should we write this new one? What is the difference of this book from the others? The motivation for writing this book originated from our efforts to select a textbook for a graduate seminar with focus on the mathematical foundations of optimization.
β¦ Table of Contents
Front Matter....Pages i-xiii
Optimization Problems....Pages 1-21
Linear Programming....Pages 23-40
Blind Manβs Method....Pages 41-50
Hitting Walls....Pages 51-63
Slope and Path Length....Pages 65-79
Average Slope....Pages 81-98
Inexact Active Constraints....Pages 99-123
Efficiency....Pages 125-132
Variable Metric Methods....Pages 133-150
Powellβs Conjecture....Pages 151-166
Minimax....Pages 167-185
Relaxation....Pages 187-200
Semidefinite Programming....Pages 201-213
Interior Point Methods....Pages 215-226
From Local to Global....Pages 227-243
Back Matter....Pages 245-273
β¦ Subjects
Optimization; Theory of Computation; Computational Mathematics and Numerical Analysis; Algorithms; Mathematics of Computing
π SIMILAR VOLUMES
The fourth and final volume in this comprehensive set presents the maximum principle as a wide ranging solution to nonclassical, variational problems. This one mathematical method can be applied in a variety of situations, including linear equations with variable coefficients, optimal processes with
During the Summer of 1944, Dr. Rudolf K. Luneburg presented a course of lectures on the Mathematical Theory of Optics at Brown University. The lecture material was later collected in a volume which was issued by Brown University in the form of mimeographe