Stationary nonseparable space-time covariance functions on networks

Author:

Porcu Emilio1,White Philip A23,Genton Marc G4ORCID

Affiliation:

1. Department of Mathematics, Khalifa University , Abu Dhabi , United Arab Emirates

2. Berry Consultants , Austin, Texas , United States

3. Department of Statistics, Brigham Young University , Provo, Utah , United States

4. Statistics Program, King Abdullah University of Science and Technology , Thuwal , Saudi Arabia

Abstract

Abstract The advent of data science has provided an increasing number of challenges with high data complexity. This paper addresses the challenge of space-time data where the spatial domain is not a planar surface, a sphere, or a linear network, but a generalised network (termed a graph with Euclidean edges). Additionally, data are repeatedly measured over different temporal instants. We provide new classes of stationary nonseparable space-time covariance functions where space can be a generalised network, a Euclidean tree, or a linear network, and where time can be linear or circular (seasonal). Because the construction principles are technical, we focus on illustrations that guide the reader through the construction of statistically interpretable examples. A simulation study demonstrates that the correct model can be recovered when compared to misspecified models. In addition, our simulation studies show that we effectively recover simulation parameters. In our data analysis, we consider a traffic accident dataset that shows improved model performance based on covariance specifications and network-based metrics.

Funder

Khalifa University of Science and Technology

NSF-DMS CDS&E

King Abdullah University of Science and Technology

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

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