Department of Statistics Seminar
North Carolina State University

presents

Mingjung Kyung

Department of Statistics
University of Florida

Title: ESTIMATION IN DIRICHLET RANDOM EFFECTS MODELS

Abstract

We develop a new Gibbs sampler for a linear mixed model with a Dirichlet process random effect term, which is easily extended to a generalized linear mixed model with a probit link function. Our Gibbs sampler exploits the properties of the multinomial and Dirichlet distributions, and is shown to be an improvement, in terms of operator norm and efficiency, over other commonly used MCMC algorithms. We also investigate methods for the estimation of the precision parameter of the Dirichlet process, finding that maximum likelihood may not be desirable, but a posterior mode is a reasonable approach. Examples are given to show how these models perform on real data. Our results complement both the theoretical basis of the Dirichlet process nonparametric prior and the computational work that has been done to date.


Friday, April 9
3:00pm - 4:00pm
2203 SAS Hall

Refreshments will be served in the 2nd floor Hallway at 2:30pm.
NOTE: No food or drink is allowed in any of the classrooms in SAS Hall.