A Stochastic Diffusion Process for the Dirichlet Distribution
Author(s) -
József Bakosi,
J. R. Ristorcelli
Publication year - 2013
Publication title -
international journal of stochastic analysis
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.19
H-Index - 28
eISSN - 2090-3340
pISSN - 2090-3332
DOI - 10.1155/2013/842981
Subject(s) - mathematics , stochastic differential equation , continuous time stochastic process , dirichlet process , dirichlet distribution , diffusion process , mathematical analysis , discrete time stochastic process , stochastic process , marginal distribution , statistical physics , random variable , statistics , bayesian probability , knowledge management , physics , innovation diffusion , computer science , boundary value problem
The method of potential solutions of Fokker-Planck equations is used to develop a transport equation for thejoint probability of N coupled stochastic variables with the Dirichlet distribution as its asymptotic solution. To ensure a bounded sample space, a coupled nonlinear diffusion process is required: the Wiener processes in the equivalent system of stochastic differential equations are multiplicative with coefficients dependent on all the stochastic variables. Individual samples of a discrete ensemble, obtained from the stochastic process, satisfy a unit-sum constraint at all times. The process may be used to represent realizations of a fluctuating ensemble of N variables subject to a conservation principle. Similar to the multivariate Wright-Fisher process, whose invariant is also Dirichlet, the univariate case yields a process whose invariant is the beta distribution. As a test of the results, Monte Carlo simulations are used to evolve numerical ensembles toward the invariant Dirichlet distribution
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