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Random doubly stochastic tridiagonal matrices
Authors:Persi Diaconis  Philip Matchett Wood
Institution:1. Department of Statistics, Stanford University, Stanford, California 94305;2. Department of Mathematics, Stanford University, Stanford, California 94305;3. Department of Mathematics, University of Wisconsin, Madison, Wisconsin 53706‐1388
Abstract:Let \begin{align*}{\mathcal T}\end{align*}n be the compact convex set of tridiagonal doubly stochastic matrices. These arise naturally in probability problems as birth and death chains with a uniform stationary distribution. We study ‘typical’ matrices T∈ \begin{align*}{\mathcal T}\end{align*}n chosen uniformly at random in the set \begin{align*}{\mathcal T}\end{align*}n. A simple algorithm is presented to allow direct sampling from the uniform distribution on \begin{align*}{\mathcal T}\end{align*}n. Using this algorithm, the elements above the diagonal in T are shown to form a Markov chain. For large n, the limiting Markov chain is reversible and explicitly diagonalizable with transformed Jacobi polynomials as eigenfunctions. These results are used to study the limiting behavior of such typical birth and death chains, including their eigenvalues and mixing times. The results on a uniform random tridiagonal doubly stochastic matrices are related to the distribution of alternating permutations chosen uniformly at random.© 2012 Wiley Periodicals, Inc. Random Struct. Alg., 42, 403–437, 2013
Keywords:Markov chain  birth and death chain  cutoff phenomenon  random matrix
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