AbstractSpatial generalized linear mixed models are usually used for modelling non-Gaussian and discrete spatial responses. In these models, spatial correlation of the data is usually modelled by spatial latent variables. Although, it is a standard assumption that the latent variables have normal distribution, in practice this assumption may not be valid. The first purpose of this paper is to use a closed skew normal distribution for the spatial latent variables which is more flexible distribution and also includes normal and skew normal distributions. The second is to develop Monte Carlo EM gradient algorithm for maximum likelihood estimation of the model parameters. Then, the performance of the proposed model is illustrated through a simu...
Beta regression models are proposed by to model the continuous variates that assume values in the st...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
We consider a spatial generalized linear latent variable model with and without nor- mality distribu...
AbstractSpatial generalized linear mixed models are usually used for modelling non-Gaussian and disc...
Summary. We use spatial generalized mixed models (GLMM) to model non-Gaussian spatial variables that...
Spatial generalized linear mixed effects models are popular in spatial or spatiotemporal data analys...
Spatial generalized linear mixed models are common in applied statistics. Most users are satisfied u...
Non-Gaussian spatial data are common in many sciences such as environmental sciences, biology and ep...
Spatial generalized linear mixed models are flexible models for a variety of applications, where spa...
Using Markov chain Monte Carlo methods for statistical inference is often troublesome in practice, b...
Non-Gaussian spatial data arise in a number of disciplines. Examples include spatial data on disease...
It is often of interest to predict spatially correlated discrete data, such as counts arising from d...
A multivariate spatial linear coregionalization model is considered that incorporates the Matérn cl...
In this paper we propose fast approximate methods for computing posterior marginals in spatial gener...
This article considers some computational issues related to the minimum mean squared error (MMSE) pr...
Beta regression models are proposed by to model the continuous variates that assume values in the st...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
We consider a spatial generalized linear latent variable model with and without nor- mality distribu...
AbstractSpatial generalized linear mixed models are usually used for modelling non-Gaussian and disc...
Summary. We use spatial generalized mixed models (GLMM) to model non-Gaussian spatial variables that...
Spatial generalized linear mixed effects models are popular in spatial or spatiotemporal data analys...
Spatial generalized linear mixed models are common in applied statistics. Most users are satisfied u...
Non-Gaussian spatial data are common in many sciences such as environmental sciences, biology and ep...
Spatial generalized linear mixed models are flexible models for a variety of applications, where spa...
Using Markov chain Monte Carlo methods for statistical inference is often troublesome in practice, b...
Non-Gaussian spatial data arise in a number of disciplines. Examples include spatial data on disease...
It is often of interest to predict spatially correlated discrete data, such as counts arising from d...
A multivariate spatial linear coregionalization model is considered that incorporates the Matérn cl...
In this paper we propose fast approximate methods for computing posterior marginals in spatial gener...
This article considers some computational issues related to the minimum mean squared error (MMSE) pr...
Beta regression models are proposed by to model the continuous variates that assume values in the st...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
We consider a spatial generalized linear latent variable model with and without nor- mality distribu...