학술논문

A New Non-Separable Kernel for Spatio-Temporal Gaussian Process Regression
Document Type
Conference
Source
2023 34th Irish Signals and Systems Conference (ISSC) Signals and Systems Conference (ISSC), 2023 34th Irish. :1-6 Jun, 2023
Subject
Bioengineering
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Couplings
Pollution
Atmospheric modeling
Gaussian processes
Predictive models
Spatiotemporal phenomena
Kernel
Gaussian process regression
spatio-temporal processes
non-separable kernel
Mahalanobis norm
PM2.5 prediction
automatic relevance determination (ARD)
Language
ISSN
2688-1454
Abstract
We adopt spatio-temporal Gaussian process regression (GPR) for prediction of PM2.5 concentrations at various spatial locations across India, and we compare its performance to purely temporal GPR. We design a new, non-separable spatiotemporal (ST) covariance kernel which can express dependence (i.e. coupling) between the spatial and temporal covariance structures. Specifically, we replace the separable weighted Euclidean norm—commonly used to achieve automatic relevance determination (ARD)—with a non-separable Mahalanobis norm in the squared exponential kernel function of the GP. We find that the spatio-temporal GPR (STGPR) task achieves better predictive performance at hold-out locations than purely temporal GPR at those locations. We also find that the new, non-separable ST exponential kernel significantly outperforms the separable ST kernel in this application.