Combinatorial Optimization: Algorithms and Complexity
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Combinatorial Optimization: Algorithms and Complexity
Problems 16. Notes and References 17. Appendix: Terminology and Notation 19. A.1 Linear Algebra 19. A.2 Graph Theory 20. A.3 Pidgin Algol 24 iii ...
Combinatorial Optimization: Algorithms and Complexity iHiiiiiiMiiimiiimiiiiiiHiiiiiimiimimiimiiiiiimmiiiiiimuimiiimiimiii
CHRISTOS H. PAPADIMITRIOU University of California-Berkeley KENNETH STEIGLITZ Princeton University
TU Darmstadt FBETiT
1008675
DOVER PUBLICATIONS, INC. Mineola, New York
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Contents
PREFACE TO THE DOVER EDITION PREFACE
Chapter 1
OPTIMIZATION PROBLEMS
xi xv
1
1.1 Introduction 1 1.2 Optimization Problems 3 1.3 Neighborhoods 7 1.4 Local and Global Optima 8 1.5 Convex Sets and Functions 10 1.6 Convex Programming Problems 13 Problems 16 Notes and References 17 Appendix: Terminology and Notation 19 A.1 Linear Algebra 19 A.2 Graph Theory 20 A.3 Pidgin Algol 24 iii
iv
CONTENTS
Chapter 2 THE SIMPLEX ALGORITHM
26
2.1 2.2 2.3
Forms of the Linear Programming Problem 26 Basic Feasible Solutions 29 The Geometry of Linear Programs 34 2.3.1 Linear and Affine Spaces 34 2.3.2 Convex Polytopes 34 2.3.3 Polytopes and LP 37 2.4 Moving from bfs to bfs 42 2.5 Organization of a Tableau 44 2.6 Choosing a Profitable Column 46 2.7 Degeneracy and Bland's Anticycling Algorithm 50 2.8 Beginning the Simplex Algorithm 55 2.9 Geometric Aspects of Pivoting 59 Problems 63 Notes and References 65
Chapter 3
DUALITY
67
3.1 The Dual of a Linear Program in General Form 67 3.2 Complementary Slackness 71 3.3 Farkas' Lemma 73 3.4 The Shortest-Path Problem and Its Dual 75 3.5 Dual Information in the Tableau 79 3.6 The Dual Simplex Algorithm 80 3.7 Interpretation of the Dual Simplex Algorithm 82 Problems 85 Notes and References 86
Chapter 4 4.1 4.2
COMPUTATIONAL CONSIDERATIONS FOR THE SIMPLEX ALGORITHM
The Revised Simplex Algorithm 88 Computational Implications of the Revised Simplex Algorithm 90 4.3 The Max-Flow Problem and Its Solution by the Revised Method 91 4.4 Dantzig-Wolfe Decomposition 97 Problems 102 Notes and References 103
88
CONTENTS
Chapter 5 THE PRIMAL-DUAL ALGORITHM
v
104
5.1 5.2 5.3 5.4
Introduction 104 The Primal-Dual Algorithm 105 Comments on the Primal-Dual Algorithm 108 The Primal-Dual Method Applied to the Shortest-Path Problem 109 5.5 Comments on Methodology 113 5.6 The Primal-Dual Method Applied to Max-Flow 114 Problems 115 Notes and References 116
Chapter 6
PRIMAL-DUAL ALGORITHMS FOR MAX-FLOW AND SHORTEST PATH: FORD-FULKERSON AND DIJKSTRA
6.1 The Max-Flow, Min-Cut Theorem 117 6.2 The Ford and Fulkerson Labeling Algorithm 120 6.3 The Question of Finiteness of the Labeling Algorithm 6.4 Dijkstra's Algorithm 128 6.5 The Floyd-Warshall Algorithm 129 Problems 134 Notes and References 135
Chapter 7
PRIMAL-DUAL ALGORITHMS FOR MIN-COST FLOW
117
124
137
7.1 7.2 7.3 7.4
The M in-Cost Flow Problem 137 Combinatorializing the Capacities—Algorithm Cycle 138 Combinatorializing the Cost—Algorithm Buildup 141 An Explicit Primal-Dual Algorithm for the Hitchcock Problem—Algorithm Alphabeta 143 7.5 A Transformation of Min-Cost Flow to Hitchcock 148 7.6 Conclusion 150 Problems 151 Notes and References 152
Chapter 8 8.1 8.2 8.3
ALGORITHMS AND COMPLEXITY Computability 156 Time Bounds 157 The Size of an Instance
159
156
Vi
CONTENTS
8.4 8.5 8.6 8.7
Analysis of Algorithms 162 Polynomial-Time Algorithms 163 Simplex Is not a Polynomial-Time Algorithm 166 The Ellipsoid Algorithm 170 8.7.1 LP, LI, and LSI 170 8.7.2 Affine Transformations and Ellipsoids 174 8.7.3 The Algorithm 176 8.7.4 Arithmetic Precision 182 Problems 185 Notes and References 190
Chapter 9
EFFICIENT ALGORITHMS FOR THE MAX-FLOW PROBLEM
193
9.1 Graph Search 194 9.2 What Is Wrong with the Labeling Algorithm 200 9.3 Network Labeling and Digraph Search 202 9.4 An O(\ V\3) Max-Flow Algorithm 206 9.5 The Case of Unit Capacities 212 Problems 214 Notes and References 216
Chapter 10 ALGORITHMS FOR MATCHING
218
10.1 The Matching Problem 219 10.2 A Bipartite Matching Algorithm 221 10.3 Bipartite Matching and Network Flow 225 10.4 Nonbipartite Matching: Blossoms 226 10.5 Nonbipartite Matching: An Algorithm 234 Problems 243 Notes and References 245
Chapter 11 WEIGHTED MATCHING
247
11.1 Introduction 247 11.2 The Hungarian Method for the Assignment Problem 248 11.3 The Nonbipartite Weighted Matching Problem 255 11.4 Conclusions 266 Problems 267 Notes and References 269
CONTENTS
Chapter 12
vii
SPANNING TREES AND MATROIDS
271
12.1 12.2
The Minimum Spanning Tree Problem 271 An O(|£"| log 11/^|) Algorithm for the Minimum Spanning Tree Problem 274 12.3 The Greedy Algorithm 278 12.4 Matroids 280 12.5 The Intersection of Two Matroids 289 12.6 On Certain Extensions of the Matroid Intersection Problem 298 12.6.1 Weighted Matroid Intersection 298 12.6.2 Matroid Parity 299 12.6.3 The Intersection of Three Matroids 300 Problems 301 Notes and References 305
Chapter 13
INTEGER LINEAR PROGRAMMING
307
13.1 Introduction 307 13.2 Total Unimodularity 316 13.3 Upper Bounds for Solutions of ILP's 318 Problems 323 Notes and References 324
Chapter 14
A CUTTING-PLANE ALGORITHM FOR INTEGER LINEAR PROGRAMS
14.1 Gomory Cuts 326 14.2 Lexicography 333 14.3 Finiteness of the Fractional Dual Algorithm 14.4 Other Cutting-Plane Algorithms 339 Problems 339 Notes and References 340
Chapter 15 15.1 15.2 15.3
326
337
NP-COMPLETE PROBLEMS Introduction 342 An Optimization Problem Is Three Problems 343 The Classes P and NP 347
342
viii
CONTENTS
15.4 15.5 15.6
Polynomial-Time Reductions 351 Cook's Theorem 353 Some Other NP-Complete Problems: Clique and theTSP 358 15.7 More /W-Complete Problems: Matching, Covering, and Partitioning 371 Problems 377 Notes and References 380
Chapter 16
MORE ABOUT NP-COMPLETENESS
383
16.1 16.2
The Class co-/VP 383 Pseudo-Polynomial Algorithms and "Strong" NP- Completeness 387 16.3 Special Cases and Generalizations of A/P-Complete Problems 391 16.3.1 /VP-Completeness by Restriction 391 16.3.2 Easy Special Cases of /VP-Complete Problems 392 16.3.3 Hard Special Cases of /W-Complete Problems 394 16.4 A Glossary of Related Concepts 395 16.4.1 Polynomial-Time Reductions 395 16.4.2 /VP-Hard Problems 397 16.4.3 Nondeterministic Turing Machines 398 16.4.4 Polynomial-Space Complete Problems 399 16.5 Epilogue 400 Problems 402 Notes and References 404
Chapter 17 APPROXIMATION ALGORITHMS 17.1 17.2
Heuristics for Node Cover: An Example 406 Approximation Algorithms for the Traveling Salesman Problem 410 17.3 Approximation Schemes 419 17.4 Negative Results 427 Problems 430 Notes and References 431
406
CONTENTS
Chapter 18
BRANCH-AND-BOUND AND DYNAMIC PROGRAMMING
ix
433
18.1 Branch-and-Bound for Integer Linear Programming 433 18.2 Branch-and-Bound in a General Context 438 18.3 Dominance Relations 442 18.4 Branch-and-Bound Strategies 443 18.5 Application to a Flowshop Scheduling Problem 444 18.6 Dynamic Programming 448 Problems 451 Notes and References 452
Chapter 19
LOCAL SEARCH
454
19.1 19.2 19.3 19.4
Introduction 454 Problem 1 : The TSP 455 Problem 2 : Minimum-Cost Survivable Networks 456 Problem 3: Topology of Offshore Natural-Gas Pipeline Systems 462 19.5 Problem 4 : Uniform Graph Partitioning 465 19.6 General Issues in Local Search 469 19.7 The Geometry of Local Search 471 19.8 An Example of a Large Minimal Exact Neighborhood 475 19.9 The Complexity of Exact Local Search for the TSP 477 Problems 481 Notes and References 484