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Journal ArticleDOI

Posterior distribution of hierarchical models using CAR(1) distributions

Dongchu Sun, +2 more
- 01 Jun 1999 - 
- Vol. 86, Iss: 2, pp 341-350
TLDR
In this paper, the authors consider a Bayesian hierarchical linear mixed model where the fixed effects have a vague prior such as a constant prior and the random effect follows a class of CAR(1) models including those whose joint prior distribution of the regional effects is improper.
Abstract
SUMMARY We examine properties of the conditional autoregressive model, or CAR( 1) model, which is commonly used to represent regional effects in Bayesian analyses of mortality rates. We consider a Bayesian hierarchical linear mixed model where the fixed effects have a vague prior such as a constant prior and the random effect follows a class of CAR(1) models including those whose joint prior distribution of the regional effects is improper. We give sufficient conditions for the existence of the posterior distribution of the fixed and random effects and variance components. We then prove the necessity of the conditions and give a one-way analysis of variance example where the posterior may or may not exist. Finally, we extend the result to the generalised linear mixed model, which includes as a special case the Poisson log-linear model commonly used in disease mapping.

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Citations
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Book

Applied Spatial Statistics for Public Health Data

TL;DR: In this paper, the authors present a method for estimating risk and risk of cancer in public health data using statistical methods for spatial data in the context of geographic information systems (GISs).
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A comparison of Bayesian spatial models for disease mapping.

TL;DR: A comprehensive review of the main classes of such models that have been used for disease mapping within a Bayesian estimation paradigm, and a performance comparison between representative models in these classes are reported, using a set of simulated data to help illustrate their respective properties.
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Modeling Interdependent Consumer Preferences

TL;DR: In this article, a Bayesian spatial autoregressive discrete-choice model is introduced to study the preference interdependence among individual consumers, and the authors illustrate their model of interdependent preferences with data on automobile purchases and show that preferences for Japanese-made cars are related to geographically and demographically defined networks.

Spatial modeling of regional variables

TL;DR: In this article, accumulated sudden infant death syndrome (SIDS) data, from 1974-1978 and 1979-1984 for the counties of North Carolina, are analyzed, and Markov random-field models are fit to the data.
Book ChapterDOI

A bayesian probit model with spatial dependencies

TL;DR: In this article, a Bayesian probit model with individual effects that exhibit spatial dependencies is presented, which allows for a parameter vector of spatial interaction effects that takes the form of a spatial autoregression.
References
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Journal ArticleDOI

Sampling-Based Approaches to Calculating Marginal Densities

TL;DR: In this paper, three sampling-based approaches, namely stochastic substitution, the Gibbs sampler, and the sampling-importance-resampling algorithm, are compared and contrasted in relation to various joint probability structures frequently encountered in applications.
Journal Article

Sampling-based approaches to calculating marginal densities

TL;DR: Stochastic substitution, the Gibbs sampler, and the sampling-importance-resampling algorithm can be viewed as three alternative sampling- (or Monte Carlo-) based approaches to the calculation of numerical estimates of marginal probability distributions.
Journal ArticleDOI

Bayesian image restoration, with two applications in spatial statistics

TL;DR: There has been much recent interest in Bayesian image analysis, including such topics as removal of blur and noise, detection of object boundaries, classification of textures, and reconstruction of two- or three-dimensional scenes from noisy lower-dimensional views as mentioned in this paper.
Journal Article

Rejoinder (Bayesian image restoration,with two applications in spatial statistics)

TL;DR: The present paper argues that many problems in the analysis of spatial data can be interpreted as problems of image restoration, since the amounts of data involved allow routine use of computer intensive methods, such as the Gibbs sampler, that are not yet practicable for conventional images.
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