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arxiv: 1007.4779 · v1 · submitted 2010-07-27 · 🧮 math.PR · math.CO· math.RT

A probabilistic interpretation of the Macdonald polynomials

classification 🧮 math.PR math.COmath.RT
keywords macdonaldpolynomialschainmarkovcasesdistributionpartitionstwo-parameter
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The two-parameter Macdonald polynomials are a central object of algebraic combinatorics and representation theory. We give a Markov chain on partitions of k with eigenfunctions the coefficients of the Macdonald polynomials when expanded in the power sum polynomials. The Markov chain has stationary distribution a new two-parameter family of measures on partitions, the inverse of the Macdonald weight (rescaled). The uniform distribution on permutations and the Ewens sampling formula are special cases. The Markov chain is a version of the auxiliary variables algorithm of statistical physics. Properties of the Macdonald polynomials allow a sharp analysis of the running time. In natural cases, a bounded number of steps suffice for arbitrarily large k.

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