Rate differences are an important effect measure in biostatistics and provide an alternative perspective to rate ratios. When the data are event counts observed during an exposure period, adjusted rate differences may be estimated using an identity-link Poisson generalised linear model, also known as additive Poisson regression. A problem with this approach is that the assumption of equality of mean and variance rarely holds in real data, which often show overdispersion. An additive negative binomial model is the natural alternative to account for this; however, standard model-fitting methods are often unable to cope with the constrained parameter space arising from the non-negativity restrictions of the additive model. In this paper, we pr...
This paper is concerned with introducing a family of multivariate mixed Negative Binomial regression...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
This paper presents the Negative Binomial-Inverse Gaussian regression model for approximating the nu...
Rate differences are an important effect measure in biostatistics and provide an alternative perspec...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...
Risk difference is an important measure of effect size in biostatistics, for both randomised and obs...
The Poisson distribution has been widely used for modelling rater agreement using loglinear models. ...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
Negative binomial maximum likelihood regression models are commonly used to analyze overdispersed Po...
Generalized additive models (GAMs) based on the binomial and Poisson distributions can be used to pr...
In many biometrical applications, the count data encountered often contain extra zeros relative to t...
Background: Risk Difference (RD) is becoming the measure of choice for estimating effect size in ant...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...
A model for binary trials based on a bivariate generalization of the Poisson process for both the nu...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small t...
This paper is concerned with introducing a family of multivariate mixed Negative Binomial regression...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
This paper presents the Negative Binomial-Inverse Gaussian regression model for approximating the nu...
Rate differences are an important effect measure in biostatistics and provide an alternative perspec...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...
Risk difference is an important measure of effect size in biostatistics, for both randomised and obs...
The Poisson distribution has been widely used for modelling rater agreement using loglinear models. ...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
Negative binomial maximum likelihood regression models are commonly used to analyze overdispersed Po...
Generalized additive models (GAMs) based on the binomial and Poisson distributions can be used to pr...
In many biometrical applications, the count data encountered often contain extra zeros relative to t...
Background: Risk Difference (RD) is becoming the measure of choice for estimating effect size in ant...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...
A model for binary trials based on a bivariate generalization of the Poisson process for both the nu...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small t...
This paper is concerned with introducing a family of multivariate mixed Negative Binomial regression...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
This paper presents the Negative Binomial-Inverse Gaussian regression model for approximating the nu...