Discrete Autoregressive Switching Processes in Sparse Graphical Modeling of Multivariate Time Series Data.

Event Date: 

Tuesday, January 28, 2025 - 3:30pm to 4:45pm

Event Date Details: 

Tuesday, January 28th, 2025

Event Location: 

  • HSSB 1174

Event Price: 

FREE

Event Contact: 

Dr. Beniamino Hadj-Amar 

Rice University 

Postdoctoral Fellow 

Department of Statistics 

  • Department Seminar

Abstract:

We propose a flexible Bayesian approach for sparse Gaussian graphical modeling of multivariate time series. We account for temporal correlation in the data by assuming that observations are characterized by an underlying and unobserved hidden discrete autoregressive process. We assume multivariate Gaussian emission distributions and capture spatial dependencies by modeling the state-specific precision matrices via graphical horseshoe priors. We characterize the mixing probabilities of the hidden process via a cumulative shrinkage prior that accommodates zero-inflated parameters for non-active components, and further incorporate a sparsity-inducing Dirichlet prior to estimate the effective number of states from the data. For posterior inference, we develop a sampling procedure that allows estimation of the number of discrete autoregressive lags and the number of states, and that cleverly avoids having to deal with the changing dimensions of the parameter space. We thoroughly investigate performance of our proposed methodology through several simulation studies. We further illustrate the use of our approach for the estimation of dynamic brain connectivity based on fMRI data collected on a subject performing a task-based experiment on latent learning.

Bio:

Dr. Beniamino Hadj-Amar is a postdoctoral fellow in the Department of Statistics at Rice University. He received his PhD from the University of Warwick in the UK. His current research interests include Time Series, Hideen Markov Models, Bayesian Inference, & Statistical Spectral Analysis. te the use of our approach for the estimation of dynamic brain connectivity based on fMRI data collected on a subject performing a task-based experiment on latent learning.