Conditionally specified space-time models for multivariate processes

Michael J. Daniels, Zhigang Zhou, Hui Zou

Research output: Contribution to journalArticlepeer-review

14 Scopus citations

Abstract

This article proposes a class of conditionally specified models for the analysis of multivariate space-time processes. Such models are useful in situations where there is sparse spatial coverage of one of the processes and much more dense coverage of the other process(es). The dependence structure across processes and over space, and time is completely specified through a neighborhood structure. These models are applicable to both point and block sources; for example, multiple pollutant monitors (point sources) or several county-level exposures (block sources). We introduce several computational tricks that are integral for model fitting, give some simple sufficient and necessary conditions for the space-time covariance matrix to be positive definite, and implement a Gibbs sampler, using Hybrid MC steps, to sample from the posterior distribution of the parameters. Model fit is assessed via the DIC. Predictive accuracy, over both time and space, is assessed both relatively and absolutely via mean squared prediction error and coverage probabilities. As an illustration of these models, we fit them to particulate matter and ozone data collected in the Los Angeles, CA, area in 1995 over a three-month period. In these data, the spatial coverage of particulate matter was sparse relative to that of ozone.

Original languageEnglish (US)
Pages (from-to)157-177
Number of pages21
JournalJournal of Computational and Graphical Statistics
Volume15
Issue number1
DOIs
StatePublished - Mar 2006

Bibliographical note

Funding Information:
The authors thank Dr. Stephen van den Eeden for providing the 1995 air pollution data, Dr. Mark Kaiser for helpful discussions on conditionally specified models, and three referees whose comments greatly improved the manuscript. Part of this work was funded by NSF DMS-9816630 and by NIH CA85295.

Keywords

  • Bayesian inference
  • CAR models
  • Markov random field model

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