It is known that the Fisher scoring iteration for generalized linear models has the same form as the Gauss‐Newton algorithm for normal regression. This note shows that exponential dispersion models are the most general families to preserve this form for the scoring iteration. Therefore exponential dispersion models are the most general extension of generalized linear models for which the analogy with normal regression is preserved. The multinomial distribution is used as an example
In their fundamental paper on cubic variance functions (VFs), Letac and Mora (The Annals of Statisti...
AbstractWe introduce a class of multivariate dispersion models suitable as error distributions for g...
Exponential dispersion models, which are linear exponential families with a dispersion parameter, ar...
When dealing with exponential family distributions, a constant dispersion is often assumed since it...
This paper presents a review about the theory of regression analysis based on Jørgensen’s dispersion...
In many families of distributions, maximum likelihood estimation is intractable because the normaliz...
A diagnostic model and several new diagnostic statistics are proposed for testing for varying disper...
© 2009 Australian Statistical Publishing Association Inc. Published by Blackwell Publishing Asia Pty...
We study joint nonparametric estimators of the mean and the dispersion functions in extended double ...
The estimation of data transformation is very useful to yield response variables satisfying closely ...
Abstract: Generalized Linear Models (GLMs) are a popular class of regression models when the respons...
A large class of modeling and prediction problems involves outcomes that belong to an exponential fa...
This paper considers the issue of testing for varying dispersion in exponential family nonlinear mod...
Exponential dispersion models, which are linear exponential families with a dispersion parameter, ar...
We introduce a class of multivariate dispersion models suitable as error distributions for generaliz...
In their fundamental paper on cubic variance functions (VFs), Letac and Mora (The Annals of Statisti...
AbstractWe introduce a class of multivariate dispersion models suitable as error distributions for g...
Exponential dispersion models, which are linear exponential families with a dispersion parameter, ar...
When dealing with exponential family distributions, a constant dispersion is often assumed since it...
This paper presents a review about the theory of regression analysis based on Jørgensen’s dispersion...
In many families of distributions, maximum likelihood estimation is intractable because the normaliz...
A diagnostic model and several new diagnostic statistics are proposed for testing for varying disper...
© 2009 Australian Statistical Publishing Association Inc. Published by Blackwell Publishing Asia Pty...
We study joint nonparametric estimators of the mean and the dispersion functions in extended double ...
The estimation of data transformation is very useful to yield response variables satisfying closely ...
Abstract: Generalized Linear Models (GLMs) are a popular class of regression models when the respons...
A large class of modeling and prediction problems involves outcomes that belong to an exponential fa...
This paper considers the issue of testing for varying dispersion in exponential family nonlinear mod...
Exponential dispersion models, which are linear exponential families with a dispersion parameter, ar...
We introduce a class of multivariate dispersion models suitable as error distributions for generaliz...
In their fundamental paper on cubic variance functions (VFs), Letac and Mora (The Annals of Statisti...
AbstractWe introduce a class of multivariate dispersion models suitable as error distributions for g...
Exponential dispersion models, which are linear exponential families with a dispersion parameter, ar...