Extremal optimization for graph partitioning

Stefan Boettcher and Allon G. Percus
Phys. Rev. E 64, 026114 – Published 20 July 2001
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Abstract

Extremal optimization is a new general-purpose method for approximating solutions to hard optimization problems. We study the method in detail by way of the computationally hard (NP-hard) graph partitioning problem. We discuss the scaling behavior of extremal optimization, focusing on the convergence of the average run as a function of run time and system size. The method has a single free parameter, which we determine numerically and justify using a simple argument. On random graphs, our numerical results demonstrate that extremal optimization maintains consistent accuracy for increasing system sizes, with an approximation error decreasing over run time roughly as a power law t0.4. On geometrically structured graphs, the scaling of results from the average run suggests that these are far from optimal with large fluctuations between individual trials. But when only the best runs are considered, results consistent with theoretical arguments are recovered.

  • Received 11 April 2001

DOI:https://doi.org/10.1103/PhysRevE.64.026114

©2001 American Physical Society

Authors & Affiliations

Stefan Boettcher*

  • Physics Department, Emory University, Atlanta, Georgia 30322

Allon G. Percus

  • Computer and Computational Sciences Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545

  • *Electronic address: sboettc@emory.edu
  • Electronic address: percus@lanl.gov

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Issue

Vol. 64, Iss. 2 — August 2001

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