In this paper, a new regression model for count response variable is proposed via re-parametrization of Poisson quasi-Lindley distribution. The maximum likelihood and method of moment estimations are considered to estimate the unknown parameters of re-parametrized Poisson quasi-Lindley distribution. The simulation study is conducted to evaluate the efficiency of estimation methods. The real data set is analyzed to demonstrate the usefulness of proposed model against the well-known regression models for count data modeling such as Poisson and negative-binomial regression models. Empirical results show that when the response variable is over-dispersed, the proposed model provides better results than other competitive models
A new two-parameter discrete distribution, namely the PoiG distribution is derived by the convolutio...
A common problem in count data models is the over-dispersed quantities of purchase that can plague t...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...
In this paper, a new zero-inflated regression model, called Zero-Inflated Poisson-Lindley regression...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
A Poisson model typically is assumed for count data. It is assumed to have the same value for expec...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
The Poisson regression model is the most common model for fitting count data. However, it is suitabl...
Conway-Maxwell-Poisson (CMP) distributions are flexible generalizations of the Poisson distribution ...
We propose a new class of discrete generalized linear models based on the class of Poisson-Tweedie f...
A popular distribution for the modelling of discrete count data is the Poisson distribution. Howeve...
A Poisson model typically is assumed for count data. It is assumed to have the same value for...
This paper develops a semiparametric estimation approach for mixed count regression models based on ...
A new two parameter quasi Poisson Lindley (NQPL) distribution is derived by using the general approa...
A new two-parameter discrete distribution, namely the PoiG distribution is derived by the convolutio...
A common problem in count data models is the over-dispersed quantities of purchase that can plague t...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...
In this paper, a new zero-inflated regression model, called Zero-Inflated Poisson-Lindley regression...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
A Poisson model typically is assumed for count data. It is assumed to have the same value for expec...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
The Poisson regression model is the most common model for fitting count data. However, it is suitabl...
Conway-Maxwell-Poisson (CMP) distributions are flexible generalizations of the Poisson distribution ...
We propose a new class of discrete generalized linear models based on the class of Poisson-Tweedie f...
A popular distribution for the modelling of discrete count data is the Poisson distribution. Howeve...
A Poisson model typically is assumed for count data. It is assumed to have the same value for...
This paper develops a semiparametric estimation approach for mixed count regression models based on ...
A new two parameter quasi Poisson Lindley (NQPL) distribution is derived by using the general approa...
A new two-parameter discrete distribution, namely the PoiG distribution is derived by the convolutio...
A common problem in count data models is the over-dispersed quantities of purchase that can plague t...
Abstract: This paper represents the comparison between Negative Binomial Regression model and Genera...