English

Reproducing kernel orthogonal polynomials on the multinomial distribution

Probability 2019-02-06 v3

Abstract

Diaconis and Griffiths (2014) study the multivariate Krawtchouk polynomials orthogonal on the multinomial distribution. In this paper we derive the reproducing kernel orthogonal polynomials Q_n(x,y};N,p) on the multinomial distribution which are sums of products of orthonormal polynomials in x and y of fixed total degree n=0,1,.., N. sum_{n=0}^N rho^nQ_n(x,y);N,p) arises naturally from a probabilistic argument. An application to a multinomial goodness of fit test is developed, where the chi-squared test statistic is decomposed into orthogonal components which test the order of fit. A new duplication formula for the reproducing kernel polynomials in terms of the 1-dimensional Krawtchouk polynomials is derived. The duplication formula allows a Lancaster characterization of all reversible Markov chains with a multinomial stationary distribution whose eigenvectors are multivariate Krawtchouk polynomials and where eigenvalues are repeated within the same total degree. The \chi^2 cutoff time, and total variation cutoff time is investigated in such chains. Emphasis throughout the paper is on a probabilistic understanding of the polynomials and their applications, particularly to Markov chains.

Keywords

Cite

@article{arxiv.1802.07122,
  title  = {Reproducing kernel orthogonal polynomials on the multinomial distribution},
  author = {Persi Diaconis and Robert Griffiths},
  journal= {arXiv preprint arXiv:1802.07122},
  year   = {2019}
}
R2 v1 2026-06-23T00:27:41.467Z