Using a Skewed Hamming Distance to Speed Up Deterministic Local Search
Abstract: Schoening presents a simple randomized algorithm for (d,k)-CSP problems with running time (d(k-1)/k)n poly(n). Here, d is the number of colors, k is the size of the constraints, and n is the number of variables. A derandomized version of this, given by Dantsin et al., achieves a running time of (dk/(k+1))n poly(n), inferior to Schoening's. We come up with a simple modification of the deterministic algorithm, achieving a running time of (d(k-1)/k * kd/(kd-1))n \poly(n). Though not completely eleminating the gap, this comes very close to the randomized bound for all but very small values of d. Our main idea is to define a graph structure on the set of d colors to speed up local search.
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