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Reconstruction for Colorings on Trees

Probability 2011-07-28 v3 Mathematical Physics Combinatorics math.MP

Abstract

Consider kk-colorings of the complete tree of depth \ell and branching factor Δ\Delta. If we fix the coloring of the leaves, as \ell tends to \infty, for what range of kk is the root uniformly distributed over all kk colors? This corresponds to the threshold for uniqueness of the infinite-volume Gibbs measure. It is straightforward to show the existence of colorings of the leaves which ``freeze'' the entire tree when kΔ+1k\le\Delta+1. For kΔ+2k\geq\Delta+2, Jonasson proved the root is ``unbiased'' for any fixed coloring of the leaves and thus the Gibbs measure is unique. What happens for a {\em typical} coloring of the leaves? When the leaves have a non-vanishing influence on the root in expectation, over random colorings of the leaves, reconstruction is said to hold. Non-reconstruction is equivalent to extremality of the free-boundary Gibbs measure. When k<Δ/lnΔk<\Delta/\ln{\Delta}, it is straightforward to show that reconstruction is possible and hence the measure is not extremal. We prove that for C>1C>1 and k=CΔ/lnΔk =C\Delta/\ln{\Delta}, that the Gibbs measure is extremal in a strong sense: with high probability over the colorings of the leaves the influence at the root decays exponentially fast with the depth of the tree. Closely related results were also proven recently by Sly. The above strong form of extremality implies that a local Markov chain that updates constant sized blocks has inverse linear entropy constant and hence O(NlogN)O(N\log N) mixing time where NN is the number of vertices of the tree.

Keywords

Cite

@article{arxiv.0711.3664,
  title  = {Reconstruction for Colorings on Trees},
  author = {Nayantara Bhatnagar and Juan Vera and Eric Vigoda and Dror Weitz},
  journal= {arXiv preprint arXiv:0711.3664},
  year   = {2011}
}

Comments

Suggestions by journal referees were incorporated

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