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Activity Number: 334 - Functional and Geometric Approaches for Imaging Data
Type: Invited
Date/Time: Thursday, August 12, 2021 : 10:00 AM to 11:50 AM
Sponsor: Section on Statistics in Imaging
Abstract #316808
Title: Learning Temporal Evolution of Spatial Dependence with Non-separable, Non-stationary Gaussian Process Models
Author(s): Shiwei Lan*
Companies: Arizona State University
Keywords: Temporal Evolution of Spatial Dependence (TESD); Spatiotemporal Gaussian process (STGP); Non-separable Non-stationary Kernel; Quasi Kronecker Product/Sum Structure; Nonparametric Spatiotemporal Covariance Model
Abstract:

A large number of scientific studies and engineering problems involve high-dimensional spatiotemporal data with complicated relationships. In this talk, we focus on a type of space-time interaction named \emph{temporal evolution of spatial dependence (TESD)}, which is a zero time-lag spatiotemporal covariance. For this purpose, we propose a novel Bayesian nonparametric method based on non-stationary spatiotemporal Gaussian process (STGP). The classic STGP has a covariance kernel separable in space and time, failed to characterize TESD. We generalize STGP (gSTGP) to introduce the time-dependence to the spatial kernel by varying its eigenvalues over time in the Mercer's representation. The resulting non-separable non-stationary covariance model bares a quasi Kronecker sum structure. Finally, a hierarchical Bayesian model for the joint covariance is proposed to allow for full flexibility in learning TESD. A simulation study and a longitudinal neuroimaging analysis on Alzheimer's patients demonstrate that the proposed methodology is (statistically) effective and (computationally) efficient in characterizing TESD.


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

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