Approximation Algorithms and Semidefinite Programming

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Semidefinite programs constitute one of the largest classes of optimization problems that can be solved with reasonable efficiency - both in theory and practice. They play a key role in a variety of research areas, such as combinatorial optimization, approximation algorithms, computational complexity, graph theory, geometry, real algebraic geometry and quantum computing. This book is an introduction to selected aspects of semidefinite programming and its use in approximation algorithms. It covers the basics but also a significant amount of recent and more advanced material.

There are many computational problems, such as MAXCUT, for which one cannot reasonably expect to obtain an exact solution efficiently, and in such case, one has to settle for approximate solutions. For MAXCUT and its relatives, exciting recent results suggest that semidefinite programming is probably the ultimate tool. Indeed, assuming the Unique Games Conjecture, a plausible but as yet unproven hypothesis, it was shown that for these problems, known algorithms based on semidefinite programming deliver the best possible approximation ratios among all polynomial-time algorithms.

This book follows the “semidefinite side” of these developments, presenting some of the main ideas behind approximation algorithms based on semidefinite programming. It develops the basic theory of semidefinite programming, presents one of the known efficient algorithms in detail, and describes the principles of some others. It also includes applications, focusing on approximation algorithms.

Author(s): Bernd Gärtner, Jiri Matousek (auth.)
Edition: 1
Publisher: Springer-Verlag Berlin Heidelberg
Year: 2012

Language: English
Pages: 251
Tags: Applications of Mathematics; Theory of Computation; Algorithm Analysis and Problem Complexity; Discrete Mathematics in Computer Science; Algorithms; Optimization

Front Matter....Pages i-xi
Front Matter....Pages 1-1
Introduction: M ax C ut Via Semidefinite Programming....Pages 3-14
Semidefinite Programming....Pages 15-25
Shannon Capacity and Lovász Theta....Pages 27-43
Duality and Cone Programming....Pages 45-73
Approximately Solving Semidefinite Programs....Pages 75-98
An Interior-Point Algorithm for Semidefinite Programming....Pages 99-118
Copositive Programming....Pages 119-130
Front Matter....Pages 131-131
Lower Bounds for the Goemans–Williamson M ax C ut Algorithm....Pages 133-155
Coloring 3-Chromatic Graphs....Pages 157-166
Maximizing a Quadratic Form on a Graph....Pages 167-177
Colorings with Low Discrepancy....Pages 179-191
Constraint Satisfaction Problems, and Relaxing Them Semidefinitely....Pages 193-210
Rounding Via Miniatures....Pages 211-227
Back Matter....Pages 229-251