We present a new version (> 2.0) of the hglm package for fitting hierarchical generalized linear models (HGLMs) with spatially correlated random effects. CAR() and SAR() families for conditional and simultaneous autoregressive random effects were implemented. Eigen decomposition of the matrix describing the spatial structure (e.g., the neighborhood matrix) was used to transform the CAR/SAR random effects into an independent, but eteroscedastic, Gaussian random effect. A linear predictor is fitted for the random effect variance to estimate the parameters in the CAR and SAR models. This gives a computationally efficient algorithm for moderately sized problems
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Description This package implements Bayesian hierarchical spatial areal unit models. In such mod-els...
This study develops a methodology of inference for a widely used Cliff-Ord type spatial model contai...
We present a new version of the hglm package for fittinghierarchical generalized linear models (HGLM...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
In this paper, we extend the GMM framework for the estimation of the mixed-regressive spatial autore...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...
Conditional autoregressive (CAR) models are commonly used to cap-ture spatial correlation in areal u...
Non-Gaussian spatial data arise in a number of disciplines. Examples include spatial data on disease...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an ...
International audienceSpatial autocorrelation is a well-recognized concern for observational data in...
I investigate, using the R package spaMM, the effect of misspecification of the smoothing parameter,...
This paper proposes a generalized specification for the panel data model with random effects and fir...
Conditional autoregressive (CAR) models are commonly used to capture spatial correlation in areal un...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Description This package implements Bayesian hierarchical spatial areal unit models. In such mod-els...
This study develops a methodology of inference for a widely used Cliff-Ord type spatial model contai...
We present a new version of the hglm package for fittinghierarchical generalized linear models (HGLM...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
In this paper, we extend the GMM framework for the estimation of the mixed-regressive spatial autore...
This dissertation proposes a generalized method of moments (GMM) estimation framework for the spatia...
Conditional autoregressive (CAR) models are commonly used to cap-ture spatial correlation in areal u...
Non-Gaussian spatial data arise in a number of disciplines. Examples include spatial data on disease...
This paper considers a hierarchically spatial autoregressive and moving average error (HSEARMA) mode...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an ...
International audienceSpatial autocorrelation is a well-recognized concern for observational data in...
I investigate, using the R package spaMM, the effect of misspecification of the smoothing parameter,...
This paper proposes a generalized specification for the panel data model with random effects and fir...
Conditional autoregressive (CAR) models are commonly used to capture spatial correlation in areal un...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Description This package implements Bayesian hierarchical spatial areal unit models. In such mod-els...
This study develops a methodology of inference for a widely used Cliff-Ord type spatial model contai...