Approximation algorithms
- *Fachbereich Mathematik, Technische Universität Berlin, Straße des 17. Juni 136, 10623 Berlin, Germany; ‡School of Operations Research and Industrial Engineering and Department of Computer Science, Cornell University, 232 Rhodes Hall, Ithaca, NY 14853; and §IBM T. J. Watson Research Labs, P. O. Box 218, Yorktown Heights, NY 10598
Abstract
Increasing global competition, rapidly changing markets, and greater consumer awareness have altered the way in which corporations do business. To become more efficient, many industries have sought to model some operational aspects by gigantic optimization problems. It is not atypical to encounter models that capture 106 separate “yes” or “no” decisions to be made. Although one could, in principle, try all 2106 possible solutions to find the optimal one, such a method would be impractically slow. Unfortunately, for most of these models, no algorithms are known that find optimal solutions with reasonable computation times. Typically, industry must rely on solutions of unguaranteed quality that are constructed in an ad hoc manner. Fortunately, for some of these models there are good approximation algorithms: algorithms that produce solutions quickly that are provably close to optimal. Over the past 6 years, there has been a sequence of major breakthroughs in our understanding of the design of approximation algorithms and of limits to obtaining such performance guarantees; this area has been one of the most flourishing areas of discrete mathematics and theoretical computer science.
Footnotes
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↵ † To whom reprint requests should be addressed. e-mail: schulz{at}math.tu-berlin.de.
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This paper is a summary of a session presented at the third annual German–American Frontiers of Science symposium, held June 20–22, 1997 at the Kardinal Wendel Haus in Munich, Germany.
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The Frontiers of Science symposia is the latest in the series “From the Academy,” which is presented occasionally to highlight work of the Academy, including the science underlying reports of the National Research Council.
- Copyright © 1997, The National Academy of Sciences of the USA





