Space-Time Covariance Models on Networks with An Application on Streams

09/30/2020
by   Jun Tang, et al.
0

The second-order, small-scale dependence structure of a stochastic process defined in the space-time domain is key to prediction (or kriging). While great efforts have been dedicated to developing models for cases in which the spatial domain is either a finite-dimensional Euclidean space or a unit sphere, counterpart developments on a generalized linear network are practically non-existent. To fill this gap, we develop a broad range of parametric, non-separable space-time covariance models on generalized linear networks and then an important subgroup – Euclidean trees by the space embedding technique – in concert with the generalized Gneiting class of models and 1-symmetric characteristic functions in the literature, and the scale mixture approach. We give examples from each class of models and investigate the geometric features of these covariance functions near the origin and at infinity. We also show the linkage between different classes of space-time covariance models on Euclidean trees. We illustrate the use of models constructed by different methodologies on a daily stream temperature data set and compare model predictive performance by cross validation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/05/2022

Nonseparable Space-Time Stationary Covariance Functions on Networks cross Time

The advent of data science has provided an increasing number of challeng...
research
07/11/2018

Towards a Complete Picture of Covariance Functions on Spheres Cross Time

With the advent of wide-spread global and continental-scale spatiotempor...
research
04/17/2016

Regularizing Solutions to the MEG Inverse Problem Using Space-Time Separable Covariance Functions

In magnetoencephalography (MEG) the conventional approach to source reco...
research
02/20/2019

Stochastic Local Interaction Model with Sparse Precision Matrix for Space-Time Interpolation

The application of geostatistical and machine learning methods based on ...
research
12/30/2019

Spatiotemporal Covariance Estimation by Shifted Partial Tracing

We consider the problem of covariance estimation for replicated space-ti...
research
11/14/2019

Kriging: Beyond Matérn

The Matérn covariance function is a popular choice for prediction in spa...
research
06/12/2023

Compatibility of Space-Time Kernels with Full, Dynamical, or Compact Support

We deal with the comparison of space-time covariance kernels having, eit...

Please sign up or login with your details

Forgot password? Click here to reset