Both Poisson and negative binomial regression can provide quasi-likelihood estimates for coefficients in exponential-mean models that are consistent in the presence of distributional misspecification. It has generally been recommended, however, that inference be carried out using asymptotically robust estimators for the parameter covariance matrix. As with linear models, such robust inference tends to lead to over-rejection of null hypotheses in small samples. Alternative methods for estimating coefficient estimator variances are considered. No one approach seems to remove all test bias, but the results do suggest that the use of the jackknife with Poisson regression tends to be least biased for inference.</p
When coupled with the simple expansion estimator, Poisson sampling leads to estimators with higher-t...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
We consider two consistent estimators for the parameters of the linear predictor in the Poisson regr...
Poisson and negative binomial regression are widely used in analyzing count data or count data with ...
In practice, outlying observations are not uncommon in many study domains. Without knowing the under...
Researchers in many fields including biomedical often make statistical inferences involving the anal...
Probabilistic index models may be used to generate classical and new rank tests, with the additional...
The zero-inflated negative binomial model is used to account for overdispersion detected in data tha...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
For a random variable y representing counts where sample mean and sample variance are equal, the Poi...
The Poisson regression model remains an important tool in the econometric analysis of count data. In...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
In the current work, some well-known inference procedures including testing and estimation are adjus...
The Poisson distribution has been widely used for modelling rater agreement using loglinear models. ...
When coupled with the simple expansion estimator, Poisson sampling leads to estimators with higher-t...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
We consider two consistent estimators for the parameters of the linear predictor in the Poisson regr...
Poisson and negative binomial regression are widely used in analyzing count data or count data with ...
In practice, outlying observations are not uncommon in many study domains. Without knowing the under...
Researchers in many fields including biomedical often make statistical inferences involving the anal...
Probabilistic index models may be used to generate classical and new rank tests, with the additional...
The zero-inflated negative binomial model is used to account for overdispersion detected in data tha...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
For a random variable y representing counts where sample mean and sample variance are equal, the Poi...
The Poisson regression model remains an important tool in the econometric analysis of count data. In...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
In the current work, some well-known inference procedures including testing and estimation are adjus...
The Poisson distribution has been widely used for modelling rater agreement using loglinear models. ...
When coupled with the simple expansion estimator, Poisson sampling leads to estimators with higher-t...
This PhD thesis contributes to the modeling of overdispered count data in three ways. First, we exte...
We consider two consistent estimators for the parameters of the linear predictor in the Poisson regr...