Negative binomial regression is commonly employed to analyze overdispersed count data. With small to moderate sample sizes, the maximum likelihood estimator of the dispersion parameter may be subject to a significant bias, that in turn affects inference on mean parameters. This article proposes inference for negative binomial regression based on adjustments of the score function aimed at mean or median bias reduction. The resulting estimating equations generalize those available for improved inference in generalized linear models and can be solved using a suitable extension of iterative weighted least squares. Simulation studies confirm the good properties of the new methods, which are also found to solve in many cases numerical problems of...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
A Poisson model typically is assumed for count data. In many cases because of many zeros in the res...
We model an overdispersed count as a dependent measurement, by means of the Negative Binomial distr...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small t...
A popular way to model overdispersed count data, such as the number of falls reported during interve...
Background. The negative binomial distribution is used commonly throughout biology as a model for ov...
The negative binomial distribution is used commonly throughout biology as a model for overdispersed ...
A substantial enhancement of the only text devoted entirely to the negative binomial model and its m...
The zero-inflated negative binomial model is used to account for overdispersion detected in data tha...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
The objective of this paper is to propose an efficient estimation procedure in a marginal mean regre...
This paper studies the eects and estimation of errors-in-variables negative binomial regression mode...
is typically not explored. from highly overdispersed distributions. In addition to exploring small-...
Recent studies on biological data which vary somewhat from Poisson description have brought the nega...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
A Poisson model typically is assumed for count data. In many cases because of many zeros in the res...
We model an overdispersed count as a dependent measurement, by means of the Negative Binomial distr...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small t...
A popular way to model overdispersed count data, such as the number of falls reported during interve...
Background. The negative binomial distribution is used commonly throughout biology as a model for ov...
The negative binomial distribution is used commonly throughout biology as a model for overdispersed ...
A substantial enhancement of the only text devoted entirely to the negative binomial model and its m...
The zero-inflated negative binomial model is used to account for overdispersion detected in data tha...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
The objective of this paper is to propose an efficient estimation procedure in a marginal mean regre...
This paper studies the eects and estimation of errors-in-variables negative binomial regression mode...
is typically not explored. from highly overdispersed distributions. In addition to exploring small-...
Recent studies on biological data which vary somewhat from Poisson description have brought the nega...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
A Poisson model typically is assumed for count data. In many cases because of many zeros in the res...
We model an overdispersed count as a dependent measurement, by means of the Negative Binomial distr...