Discrete optimization problems are everywhere, from traditional operations research planning (scheduling, facility location and network design); to computer science databases; to advertising issues in viral marketing. Yet most such problems are NP-hard; unless P = NP, there are no efficient algorithms to find optimal solutions. This book shows how to design approximation algorithms: efficient algorithms that find provably near-optimal solutions. The book is organized around central algorithmic techniques for designing approximation algorithms, including greedy and local search algorithms, dynamic programming, linear and semidefinite programming, and randomization. Each chapter in the first section is devoted to a single algorithmic technique applied to several different problems, with more sophisticated treatment in the second section. The book also covers methods for proving that optimization problems are hard to approximate. Designed as a textbook for graduate-level algorithm courses, it will also serve as a reference for researchers interested in the heuristic solution of discrete optimization problems.
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Specifications
Book Details
Imprint
Cambridge University Press
Dimensions
Width
34 mm
Height
262 mm
Length
189 mm
Weight
1120 gr
Ratings & Reviews
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5
Nice shopping experience
This is currently the default textbook to learn and teach approximation algorithms. There is no need to say anything more about the book.
The service from Flipkart (WS Retails, in particular) was spectacular, as usual. The book was delivered well before the promised deadline.