In this work we study sensitivity to hyperprior specification of the dispersion parameter in a convolution model widely used in spatial disease mapping, that accounts for both structured (spatial) and unstructured heterogeneity. In the fully Bayesian approach to disease mapping, hyperprior choice sensibly affects inferences. In this work we critically review the most common hyperprior specifications. Moreover we propose a new hyperprior distribution, the Generalised Inverse Gaussian, starting from an idea explored in the estimation of the mean for iid log-Normal observations. In this context it is well known that hyperprior parameters have to be set accurately in order to avoid infinite moments of the posterior distributio...
Conditionally specified Gaussian Markov random field (GMRF) models with adjacency- or distance-base...
Hyperprior specifications for random fields in spatial point process modelling can have a major impa...
Disease mapping encompasses a set of methodologies employed to describe the disease risk distributio...
In this paper, we consider the problem of specifying priors for the variance components in the Bayes...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...
Disease mapping aims to determine the underlying disease risk from scattered epidemiological data an...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
The main goal of Disease Mapping is to investigate the geographical distribution of the risk of dise...
Bayesian disease mapping, yet if undeniably useful to describe variation in risk over time and space...
© 2020 Helena Baptista et al., published by De Gruyter, Berlin/Boston 2020. Recent advances in the s...
Hierarchical Bayesian models involving conditional autoregression (CAR) components are commonly used...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Gaussian Markov random fields (GMRF) are important families of distributions for the modeling of spa...
In geographical epidemiology, maps of disease rates and disease risk provide a spatial perspective f...
Conditionally specified Gaussian Markov random field (GMRF) models with adjacency- or distance-base...
Hyperprior specifications for random fields in spatial point process modelling can have a major impa...
Disease mapping encompasses a set of methodologies employed to describe the disease risk distributio...
In this paper, we consider the problem of specifying priors for the variance components in the Bayes...
Disease mapping and spatial statistics have become an important part of modern day statistics and ha...
Disease mapping aims to determine the underlying disease risk from scattered epidemiological data an...
International audienceDisease mapping aims to determine the underlying disease risk from scattered e...
Disease maps are geographical maps that display local estimates of disease risk. When the disease is...
The main goal of Disease Mapping is to investigate the geographical distribution of the risk of dise...
Bayesian disease mapping, yet if undeniably useful to describe variation in risk over time and space...
© 2020 Helena Baptista et al., published by De Gruyter, Berlin/Boston 2020. Recent advances in the s...
Hierarchical Bayesian models involving conditional autoregression (CAR) components are commonly used...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Gaussian Markov random fields (GMRF) are important families of distributions for the modeling of spa...
In geographical epidemiology, maps of disease rates and disease risk provide a spatial perspective f...
Conditionally specified Gaussian Markov random field (GMRF) models with adjacency- or distance-base...
Hyperprior specifications for random fields in spatial point process modelling can have a major impa...
Disease mapping encompasses a set of methodologies employed to describe the disease risk distributio...