We propose a class of double hierarchical generalized linear models in which random effects can be specified for both the mean and dispersion. Heteroscedasticity between clusters can be modelled by introducing random effects in the dispersion model, as is heterogeneity between clusters in the mean model. This class will, among other things, enable models with heavy-tailed distributions to be explored, providing robust estimation against outliers. The h-likelihood provides a unified framework for this new class of models and gives a single algorithm for fitting all members of the class. This algorithm does not require quadrature or prior probabilities
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Reinforcement learning is one of the paradigms and methodologies of machine learning developed in th...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
Abstract: Generalized Linear Models (GLMs) are a popular class of regression models when the respons...
HolaFor inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical like...
Hierarchical generalized linear models are often used to fit random effects models. However, attenti...
Hierarchical generalized linear models are often used to fit random effects models. However, attenti...
We present the hglm package for fitting hierarchical generalized linear models. It can be used for l...
Abstract We propose a class of hierarchical generalized linear models (HGLMs) with ran-dom dispersio...
Non-Gaussian outcomes are often modeled using members of the so-called exponential family. Notorious...
For inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical likeliho...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Reinforcement learning is one of the paradigms and methodologies of machine learning developed in th...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
Abstract: Generalized Linear Models (GLMs) are a popular class of regression models when the respons...
HolaFor inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical like...
Hierarchical generalized linear models are often used to fit random effects models. However, attenti...
Hierarchical generalized linear models are often used to fit random effects models. However, attenti...
We present the hglm package for fitting hierarchical generalized linear models. It can be used for l...
Abstract We propose a class of hierarchical generalized linear models (HGLMs) with ran-dom dispersio...
Non-Gaussian outcomes are often modeled using members of the so-called exponential family. Notorious...
For inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical likeliho...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Reinforcement learning is one of the paradigms and methodologies of machine learning developed in th...