Non-Separable Spatio-temporal Models via Transformed Gaussian Markov Random Fields

05/11/2020
by   Douglas R. M. Azevedo, et al.
0

Models that capture the spatial and temporal dynamics are applicable in many science fields. Non-separable spatio-temporal models were introduced in the literature to capture these features. However, these models are generally complicated in construction and interpretation. We introduce a class of non-separable Transformed Gaussian Markov Random Fields (TGMRF) in which the dependence structure is flexible and facilitates simple interpretations concerning spatial, temporal and spatio-temporal parameters. Moreover, TGMRF models have the advantage of allowing specialists to define any desired marginal distribution in model construction without suffering from spatio-temporal confounding. Consequently, the use of spatio-temporal models under the TGMRF framework leads to a new class of general models, such as spatio-temporal Gamma random fields, that can be directly used to model Poisson intensity for space-time data. The proposed model was applied to identify important environmental characteristics that affect variation in the abundance of Nenia tridens, a dominant species of snail in a well-studied tropical ecosystem, and to characterize its spatial and temporal trends, which are particularly critical during the Anthropocene, an epoch of time characterized by human-induced environmental change associated with climate and land use.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/19/2018

Bayesian regression with spatio-temporal varying coefficients

We propose a spatio-temporal dependent process with normal marginal dist...
research
09/27/2021

Variance partitioning in spatio-temporal disease mapping models

Bayesian disease mapping, yet if undeniably useful to describe variation...
research
03/31/2022

Separable spatio-temporal kriging for fast virtual sensing

Environmental monitoring is a task that requires to surrogate system-wid...
research
02/22/2019

Gaussian Markov Random Fields versus Linear Mixed Models for satellite-based PM2.5 assessment: Evidence from the Northeastern USA

Studying the effects of air-pollution on health is a key area in environ...
research
09/10/2020

Testing the first-order separability hypothesis for spatio-temporal point patterns

First-order separability of a spatio-temporal point process plays a fund...
research
07/05/2019

Spatio-Temporal Reconstructions of Global CO2-Fluxes using Gaussian Markov Random Fields

Atmospheric inverse modelling is a method for reconstructing historical ...

Please sign up or login with your details

Forgot password? Click here to reset