none2noGeneralized linear mixed models (GLMM) represent a flexible tool to model environmental data which are characterized by various sources of heterogeneity, e.g. spatial/temporal correlation. The usual interpretation is that fixed effects ‘explain’ the response by measuring the effect of observed covariates, while random effects ‘account’ for heterogeneity due to unobserved factors. Most popular models for random effects are Gaussian conditional on some flexibility parameter (e.g. variance, correlation range), the prior specification and estimation of which represents a crucial issue in many applications. Often, random effects have a more predominant role in the analysis and are used for explanatory purposes rather than as tools to capt...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
In this thesis, we explore the issue of latent correlation structure in spatial and other correlated...
Environmental datasets such as those from remote-sensing platforms and sensor net-works are often sp...
Generalized linear mixed models (GLMM) represent a flexible tool to model environmental data which a...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
In community ecology studies the goal is to evaluate the effect of environmental covariates on a res...
International audienceSpatial autocorrelation is a well-recognized concern for observational data in...
Modeling spatial and temporal correlation simultaneously has become a topic of interest for differen...
The link function plays an essential role in the generalized linear model and generalized linear mix...
Non-Gaussian spatial data arise in a number of disciplines. Examples include spatial data on disease...
We propose Bayesian generalized additive mixed models for correlated data, which arise frequently in...
Abstract. Non-gaussian spatial data are very common in many disciplines. For instance, count data ar...
It is often of interest to predict spatially correlated discrete data, such as counts arising from d...
Summary. We use spatial generalized mixed models (GLMM) to model non-Gaussian spatial variables that...
Statistics is a science that deals with variability in data. The presence of variation in natural pr...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
In this thesis, we explore the issue of latent correlation structure in spatial and other correlated...
Environmental datasets such as those from remote-sensing platforms and sensor net-works are often sp...
Generalized linear mixed models (GLMM) represent a flexible tool to model environmental data which a...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
In community ecology studies the goal is to evaluate the effect of environmental covariates on a res...
International audienceSpatial autocorrelation is a well-recognized concern for observational data in...
Modeling spatial and temporal correlation simultaneously has become a topic of interest for differen...
The link function plays an essential role in the generalized linear model and generalized linear mix...
Non-Gaussian spatial data arise in a number of disciplines. Examples include spatial data on disease...
We propose Bayesian generalized additive mixed models for correlated data, which arise frequently in...
Abstract. Non-gaussian spatial data are very common in many disciplines. For instance, count data ar...
It is often of interest to predict spatially correlated discrete data, such as counts arising from d...
Summary. We use spatial generalized mixed models (GLMM) to model non-Gaussian spatial variables that...
Statistics is a science that deals with variability in data. The presence of variation in natural pr...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
In this thesis, we explore the issue of latent correlation structure in spatial and other correlated...
Environmental datasets such as those from remote-sensing platforms and sensor net-works are often sp...