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Linear Programming Bounds for Randomly Sampling Colorings

Data Structures and Algorithms 2018-06-08 v2 Discrete Mathematics Mathematical Physics math.MP Probability

Abstract

Here we study the problem of sampling random proper colorings of a bounded degree graph. Let kk be the number of colors and let dd be the maximum degree. In 1999, Vigoda showed that the Glauber dynamics is rapidly mixing for any k>116dk > \frac{11}{6} d. It turns out that there is a natural barrier at 116\frac{11}{6}, below which there is no one-step coupling that is contractive, even for the flip dynamics. We use linear programming and duality arguments to guide our construction of a better coupling. We fully characterize the obstructions to going beyond 116\frac{11}{6}. These examples turn out to be quite brittle, and even starting from one, they are likely to break apart before the flip dynamics changes the distance between two neighboring colorings. We use this intuition to design a variable length coupling that shows that the Glauber dynamics is rapidly mixing for any k(116ϵ0)dk\ge \left(\frac{11}{6} - \epsilon_0\right)d where ϵ09.4105\epsilon_0 \geq 9.4 \cdot 10^{-5}. This is the first improvement to Vigoda's analysis that holds for general graphs.

Keywords

Cite

@article{arxiv.1804.03156,
  title  = {Linear Programming Bounds for Randomly Sampling Colorings},
  author = {Sitan Chen and Ankur Moitra},
  journal= {arXiv preprint arXiv:1804.03156},
  year   = {2018}
}

Comments

30 pages, 3 figures; fixed some typos