A Poisson model typically is assumed for count data. In many cases because of many zeros in the response variable, the mean is not equal to the variance value of the dependent variable. Therefore, the Poisson model is no longer suitable for this kind of data. Thus, we suggest using a hurdle negative binomial regression model to overcome the problem of overdispersion. Furthermore, the response variable in such cases is censored for some values. In this paper, a censored hurdle negative binomial regression model is introduced on count data with many zeros. The estimation of regression parameters using maximum likelihood is discussed and the goodness-of-fit for the regression model is examinedPeer Reviewe
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
Count data are quite common in many research areas. Interval-censored counts, in which an interval ...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...
A Poisson model typically is assumed for count data. In many cases because of many zeros in the resp...
A Poisson regression model is well-known for modeling the data with response variable in form of cou...
Typically, a Poisson model is assumed for count data. In many cases, there are many zeros in the dep...
A Poisson model typically is assumed for count data. In many cases, there are many zeros in the depe...
Typically, a Poisson regression model is assumed for count data. In many cases, there are many zeros...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
A Poisson model typically is assumed for count data, but when there are so many zeroes in the respon...
A Poisson model typically is assumed for count data. However Poisson model is not suitable for data ...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...
The zero-inflated Poisson regression model is often used to analyse count data with an excess of zer...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
A substantial enhancement of the only text devoted entirely to the negative binomial model and its m...
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
Count data are quite common in many research areas. Interval-censored counts, in which an interval ...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...
A Poisson model typically is assumed for count data. In many cases because of many zeros in the resp...
A Poisson regression model is well-known for modeling the data with response variable in form of cou...
Typically, a Poisson model is assumed for count data. In many cases, there are many zeros in the dep...
A Poisson model typically is assumed for count data. In many cases, there are many zeros in the depe...
Typically, a Poisson regression model is assumed for count data. In many cases, there are many zeros...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
A Poisson model typically is assumed for count data, but when there are so many zeroes in the respon...
A Poisson model typically is assumed for count data. However Poisson model is not suitable for data ...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...
The zero-inflated Poisson regression model is often used to analyse count data with an excess of zer...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
A substantial enhancement of the only text devoted entirely to the negative binomial model and its m...
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
Count data are quite common in many research areas. Interval-censored counts, in which an interval ...
Negative binomial regression is commonly employed to analyze overdispersed count data. With small to...