Speaker:Professor Bani K. Mallick, Department of Statistics, Texas A&M
University
Title:Bayesian Gaussian Graphical Models and their extensions
Abstract:
Gaussian graphical models (GGMs) are well-established tools for
probabilistic exploration of dependence structures using precision
(inverse covariance) matrices. We propose a Bayesian method for estimating
the precision matrix in GGMs. The method leads
to a sparse and adaptively shrunk estimator of the precision matrix, and
thus conduct model selection and estimation simultaneously. We extend this
method in a regression setup with the presence of covariates. We consider
both the linear as well as the nonlinear
regressions in this GGM framework. Furthermore, to relax the assumption of
the Gaussian distribution, we develop a quantile based approach for sparse
estimation of graphs. We demonstrate that the resulting graph estimator is
robust to outliers and applicable
under general distributional assumptions. We discuss a few applications of
the proposed models.
Time:
2:30pm
Location:
Room 216
Description:
Classifying Spaces(Lecture II)
Abstract. We will continue our discussion of classifying spaces and talk about Milnor's construction of classifying spaces for any topological group. We will try to link this to the construction of classifying spaces given by G.Segal in his paper "Classifying Spaces and Spectral Sequences".