Phys. Rev. E 67, 066104 (2003) [15 pages]Solving satisfiability problems by fluctuations: The dynamics of stochastic local search algorithmsReceived 15 January 2003; published 12 June 2003 Stochastic local search algorithms are frequently used to numerically solve hard combinatorial optimization or decision problems. We give numerical and approximate analytical descriptions of the dynamics of such algorithms applied to random satisfiability problems. We find two different dynamical regimes, depending on the number of constraints per variable: For low constraintness, the problems are solved efficiently, i.e., in linear time. For higher constraintness, the solution times become exponential. We observe that the dynamical behavior is characterized by a fast equilibration and fluctuations around this equilibrium. If the algorithm runs long enough, an exponentially rare fluctuation towards a solution appears. © 2003 The American Physical Society URL:
http://link.aps.org/doi/10.1103/PhysRevE.67.066104
DOI:
10.1103/PhysRevE.67.066104
PACS:
02.50.Ga, 05.40.-a, 89.20.Ff
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