There has been much recent progress in approximation algorithms for
nonconvex continuous and discrete problems from both a theoretical and
a practical perspective. In discrete (or combinatorial) optimization
many approaches have been developed recently that link the discrete
universe to the continuous universe through geomet ric, analytic,
and algebraic techniques. Such techniques include global optimization
formulations, semidefinite programming, and spectral theory. As a
result new ap proximate algorithms have been discovered and many new
computational approaches have been developed. Similarly, for many
continuous nonconvex optimization prob lems, new approximate
algorithms have been developed based on semidefinite pro gramming
and new randomization techniques. On the other hand, computational
complexity, originating from the interactions between computer science
and numeri cal optimization, is one of the major theories that have
revolutionized the approach to solving optimization problems and to
analyzing their intrinsic difficulty. The main focus of complexity is
the study of whether existing algorithms are efficient for the
solution of problems, and which problems are likely to be tractable.
The quest for developing efficient algorithms leads also to elegant
general approaches for solving optimization problems, and reveals
surprising connections among problems and their solutions. A
conference on Approximation and Complexity in Numerical Optimization:
Con tinuous and Discrete Problems was held during February 28 to
March 2, 1999 at the Center for Applied Optimization of the University
of Florida.
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Continuous and Discrete Problems
Produktdetaljer
ISBN
9781475731453
Publisert
2020
Utgave
1. utgave
Utgiver
Springer Nature
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter