The objective of this paper is to propose an efficient estimation procedure in a marginal mean regression model for longitudinal count data and to develop a hypothesis test for detecting the presence of overdispersion. We extend the matrix expansion idea of quadratic inference functions to the negative binomial regression framework that entails accommodating both the within-subject correlation and overdispersion issue. Theoretical and numerical results show that the proposed procedure yields a more efficient estimator asymptotically than the one ignoring either the within-subject correlation or overdispersion. When the overdispersion is absent in data, the proposed method might hinder the estimation efficiency in practice, yet the Poisson r...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
In this paper we consider regression models for count data allowing for overdispersion in a Bayesian...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
<p>In this paper, we consider a model for repeated count data, with within-subject correlation and/o...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...
This thesis submitted in partial fulfillment of the requirements for the degree of Master of Science...
Objectives: Poisson regression is now widely used in epidemiology, but researchers do not always eva...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...
AbstractLiang and Zeger introduced a class of estimating equations that gives consistent estimates o...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Overdispersion is a common feature ...
Count data are common endpoints in clinical trials, for example magnetic resonance imaging lesion co...
We present motivation and new Stata commands for modeling count data. While the focus of this articl...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
In this paper we consider regression models for count data allowing for overdispersion in a Bayesian...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
<p>In this paper, we consider a model for repeated count data, with within-subject correlation and/o...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...
This thesis submitted in partial fulfillment of the requirements for the degree of Master of Science...
Objectives: Poisson regression is now widely used in epidemiology, but researchers do not always eva...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...
AbstractLiang and Zeger introduced a class of estimating equations that gives consistent estimates o...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Overdispersion is a common feature ...
Count data are common endpoints in clinical trials, for example magnetic resonance imaging lesion co...
We present motivation and new Stata commands for modeling count data. While the focus of this articl...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
In this paper we consider regression models for count data allowing for overdispersion in a Bayesian...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...