The negative binomial distribution was perhaps the first probability distribution, considered in statistics, whose variance is larger than its mean. On account of wide variety of available discrete distributions, the research workers in applied fields have begun to wonder which distribution would be most suitable one in a particular case and how to choose it. Generalized Negative Binomial Distribution (GNBD) reduces the binomial or the negative binomial distribution as particular cases and converges to a Poisson-type distribution in which the variance may be more than, equal to or less than the mean, depending upon the value of the parameter. A number of methods for estimation of parameters of GNBD, like weighted discrepancies method, minim...
In a previous paper we state the dominant term in the third central moment of the maximum likelihood...
This thesis considers bivariate extension of the Meixner class of distributions by the method of gen...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
The generalized negative binomial distribution characterized by three parameters, has been used to f...
In this paper, we propose a generalized likelihood ratio test to discernwhether a set of data fits a...
Recent studies on biological data which vary somewhat from Poisson description have brought the nega...
Best and Gipps (1974) showed that the negative binomial distribution can be approximated closely by ...
A size biased generalized negative binomial distribution (SBGNBD) is defined and a recurrence relati...
The negative binomial distribution has become increasingly popular as a more flexible alternative to...
In this article we investigate a class of moment-based estimators, called power method estimators, w...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
In this paper, a quasi-negative binomial distribution (QNBD) derived from the class of generalized L...
It is shown that the hypergeometric generalized negative binomial distribution has mo-ments of all p...
A size-biased negative binomial distribution, a particular case of the weighted negative binomial di...
In this paper, a new mixture distribution for count data, namely the negative binomial-new generaliz...
In a previous paper we state the dominant term in the third central moment of the maximum likelihood...
This thesis considers bivariate extension of the Meixner class of distributions by the method of gen...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
The generalized negative binomial distribution characterized by three parameters, has been used to f...
In this paper, we propose a generalized likelihood ratio test to discernwhether a set of data fits a...
Recent studies on biological data which vary somewhat from Poisson description have brought the nega...
Best and Gipps (1974) showed that the negative binomial distribution can be approximated closely by ...
A size biased generalized negative binomial distribution (SBGNBD) is defined and a recurrence relati...
The negative binomial distribution has become increasingly popular as a more flexible alternative to...
In this article we investigate a class of moment-based estimators, called power method estimators, w...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
In this paper, a quasi-negative binomial distribution (QNBD) derived from the class of generalized L...
It is shown that the hypergeometric generalized negative binomial distribution has mo-ments of all p...
A size-biased negative binomial distribution, a particular case of the weighted negative binomial di...
In this paper, a new mixture distribution for count data, namely the negative binomial-new generaliz...
In a previous paper we state the dominant term in the third central moment of the maximum likelihood...
This thesis considers bivariate extension of the Meixner class of distributions by the method of gen...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...