Spatio-Temporal Random Partition Models

12/24/2019
by   Garritt L. Page, et al.
0

The number of scientific fields that regularly collect data that are spatio-temporal continues to grow. An intuitive feature of this type of data is that measurements taken on experimental units near each other in time and space tend to be similar. As such, many methods developed to accommodate spatio-temporal dependent structures attempt to borrow strength among units close in space and time, which constitutes an implicit space-time grouping. We develop a class of dependent random partition models that explicitly models this spatio-temporal clustering by way of a dependent random partition model. We first detail how temporal dependence is incorporated so that partitions evolve gently over time. Then conditional and marginal properties of the joint model are derived. We then demonstrate how space can be integrated. Computation strategies are detailed and we illustrate the methodology through simulations and an application.

READ FULL TEXT

page 3

page 9

page 26

research
12/19/2018

Bayesian regression with spatio-temporal varying coefficients

We propose a spatio-temporal dependent process with normal marginal dist...
research
12/09/2018

Spatio-Temporal Models for Big Multinomial Data using the Conditional Multivariate Logit-Beta Distribution

We introduce a Bayesian approach for analyzing high-dimensional multinom...
research
04/06/2023

A Socio-Demographic Latent Space Approach to Spatial Data When Geography is Important but Not All-Important

Many models for spatial and spatio-temporal data assume that "near thing...
research
03/22/2021

Interpretable, predictive spatio-temporal models via enhanced Pairwise Directions Estimation

This article concerns the predictive modeling for spatio-temporal data a...
research
01/20/2022

Parallel and distributed Bayesian modelling for analysing high-dimensional spatio-temporal count data

This paper proposes a general procedure to analyse high-dimensional spat...
research
09/27/2021

Variance partitioning in spatio-temporal disease mapping models

Bayesian disease mapping, yet if undeniably useful to describe variation...

Please sign up or login with your details

Forgot password? Click here to reset