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Interior Point and Semidefinite Approaches in Combinatorial Optimization

In: Graph Theory and Combinatorial Optimization

Author

Listed:
  • Kartik Krishnan
  • Tamás Terlaky

Abstract

Conic programming, especially semidefinite programming (SDP), has been regarded as linear programming for the 21st century. This tremendous excitement was spurred in part by a variety of applications of SDP in integer programming (IP) and combinatorial optinmization, and the development of efficient primal-dual interior-point rnethods (IPMs) and various first order approaches for the solution of large scale SDPs. This survey presents an up to date account of semidefinite and interior point approaches in solving NP-hard combinatorial optimnization problenis to optimality, and also in developing approximation algorithms for some of them. The interior point approaches discussed in the survey have been applied directly to non-convex formulations of IPs; they appear in a cutting plane framework to solving IPs, and finally as a subroutine to solving SDP relaxations of IPs. The surveyed approaches include non-convex potential reduction methods, interior point cutting plane methods, primal-dual IPMs and first-order algorithms for solving SDPs, branch and out approaches based on SDP relaxations of IPs, approximation algorithms based on SDP formulations, and finally methods employing successive convex approximations of the underlying combinatorial optimization problem.

Suggested Citation

  • Kartik Krishnan & Tamás Terlaky, 2005. "Interior Point and Semidefinite Approaches in Combinatorial Optimization," Springer Books, in: David Avis & Alain Hertz & Odile Marcotte (ed.), Graph Theory and Combinatorial Optimization, chapter 0, pages 101-157, Springer.
  • Handle: RePEc:spr:sprchp:978-0-387-25592-7_5
    DOI: 10.1007/0-387-25592-3_5
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    Cited by:

    1. Levent Tunçel & Henry Wolkowicz, 2012. "Strong duality and minimal representations for cone optimization," Computational Optimization and Applications, Springer, vol. 53(2), pages 619-648, October.

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