Online Program Home
My Program

Abstract Details

Activity Number: 554
Type: Topic Contributed
Date/Time: Wednesday, August 3, 2016 : 10:30 AM to 12:20 PM
Sponsor: Scientific and Public Affairs Advisory Committee
Abstract #319999
Title: Bayesian Inference in Nonparanormal Graphical Models
Author(s): Jami Jackson* and Subhashis Ghosal
Companies: North Carolina State University and North Carolina State University
Keywords: Bayesian inference ; graphical model ; nonparametric ; graphical lasso ; nonparanormal ; sparse precision matrix
Abstract:

Gaussian graphical models, where it is assumed that the variables of interest jointly follow multivariate normal distributions with sparse precision matrices, have been used to study intrinsic dependence among several variables, but the Gaussianity assumption may be restrictive in many applications. A nonparanormal graphical model is a nonparametric generalization of a Gaussian graphical model for continuous variables where it is assumed that the variables follow a Gaussian graphical model only after some unknown smooth monotone transformation. We consider a Bayesian approach in the nonparanormal graphical model by putting priors on the unknown transformations through a random series based on B-splines where the coefficients are ordered to induce monotonicity. A truncated normal prior leads to partial conjugacy in the model and is useful for posterior simulation using Gibbs sampling. On the underlying precision matrix of the transformed variables, we consider a continuous shrinkage prior on its Cholesky decomposition and use an efficient posterior Gibbs sampling scheme. We study numerical performance of the proposed method through a simulation study and apply it on a real dataset.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2016 program

 
 
Copyright © American Statistical Association