Revised Version of the paperIn this paper we introduce a novel Bayesian data augmentation approach for estimating the parameters of the generalised logistic regression model. We propose a P\'olya-Gamma sampler algorithm that allows us to sample from the exact posterior distribution, rather than relying on approximations. A simulation study illustrates the flexibility and accuracy of the proposed approach to capture heavy and light tails in binary response data of different dimensions. The methodology is applied to two different real datasets, where we demonstrate that the P\'olya-Gamma sampler provides more precise estimates than the empirical likelihood method, outperforming approximate approaches
AbstractBecause of their flexibility, recently, much attention has been given to the study of genera...
Generalized distributions have become widely used in applications recently. They are very flexible i...
This is the publisher’s final pdf. The published article is copyrighted by the International Society...
We propose a new data-augmentation strategy for fully Bayesian inference in models with binomial lik...
Modeling binary and categorical data is one of the most commonly encountered tasks of applied statis...
Modeling binary and categorical data is one of the most commonly encountered tasks of applied statis...
In order to combat multicollinearity, the r–d class estimator was introduced in linear and binary lo...
Modeling binary and categorical data is one of the most commonly encountered tasks of applied statis...
We present a command, penlogit, for approximate Bayesian logistic regression using penalized likelih...
The log-gamma model has been used extensively for flood frequency analysis and is an important distr...
A Bayesian approach to estimation of the regression coefficients of a multinominal logit model with ...
Estimation for the parameters of the generalized logistic distribution (GLD) is obtained based on re...
Because of their flexibility, recently, much attention has been given to the study of generalized di...
The logistic specification has been used extensively in non-Bayesian statistics to model the depende...
The paper aims to propose a family of estimators for the Bayesian analysis of three parametric gener...
AbstractBecause of their flexibility, recently, much attention has been given to the study of genera...
Generalized distributions have become widely used in applications recently. They are very flexible i...
This is the publisher’s final pdf. The published article is copyrighted by the International Society...
We propose a new data-augmentation strategy for fully Bayesian inference in models with binomial lik...
Modeling binary and categorical data is one of the most commonly encountered tasks of applied statis...
Modeling binary and categorical data is one of the most commonly encountered tasks of applied statis...
In order to combat multicollinearity, the r–d class estimator was introduced in linear and binary lo...
Modeling binary and categorical data is one of the most commonly encountered tasks of applied statis...
We present a command, penlogit, for approximate Bayesian logistic regression using penalized likelih...
The log-gamma model has been used extensively for flood frequency analysis and is an important distr...
A Bayesian approach to estimation of the regression coefficients of a multinominal logit model with ...
Estimation for the parameters of the generalized logistic distribution (GLD) is obtained based on re...
Because of their flexibility, recently, much attention has been given to the study of generalized di...
The logistic specification has been used extensively in non-Bayesian statistics to model the depende...
The paper aims to propose a family of estimators for the Bayesian analysis of three parametric gener...
AbstractBecause of their flexibility, recently, much attention has been given to the study of genera...
Generalized distributions have become widely used in applications recently. They are very flexible i...
This is the publisher’s final pdf. The published article is copyrighted by the International Society...