2000 Mathematics Subject Classification: 62F15.The Negative Binomial model, which is generated by a simple mixture model, has been widely applied in the social, health and economic market prediction. The most commonly used methods were the maximum likelihood estimate (MLE) and the moment method estimate (MME). Bradlow et al. (2002) proposed a Bayesian inference with beta-prime and Pearson Type VI as priors for the negative binomial distribution. It is due to the complicated posterior densities of interest not amenable to closed-form integration. A polynomial type expansion for the gamma function had been used to derive approximations for posterior densities by Bradlow et al. (2002). In this note, different parameters of interest are used to...
Research Doctorate - Doctor of Philosophy (PhD)Interval estimation of the Binomial parameter è, repr...
In regression analysis of counts, a lack of simple and efficient algorithms for posterior computatio...
In the statistical analysis of binary data, usually the binomial distribution is themost commonly us...
To date, Bayesian inferences for the negative binomial distribution (NBD) have relied on computation...
Field of study: Statistics.Dr. Dongchu Sun, Thesis Supervisor.Includes vita."July 2018."In Bayesian ...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
This study considers two discrete distributions based on Bernoulli trials: the Binomial and the Nega...
In this paper, we propose a Bayesian method for modelling count data by Poisson, binomial or negativ...
Recent studies on biological data which vary somewhat from Poisson description have brought the nega...
A size biased generalized negative binomial distribution (SBGNBD) is defined and a recurrence relati...
A commonly used paradigm in modeling count data is to assume that individual counts are generated fr...
The beta-binomial model which is generated by a simple mixture model has been widely applied in the ...
In this paper, we propose a generalized likelihood ratio test to discernwhether a set of data fits a...
In areas such as health and insurance, there can be data limitations that may cause an identificatio...
Bayes negative binomial models under two different parameterizations are shown to be completely iden...
Research Doctorate - Doctor of Philosophy (PhD)Interval estimation of the Binomial parameter è, repr...
In regression analysis of counts, a lack of simple and efficient algorithms for posterior computatio...
In the statistical analysis of binary data, usually the binomial distribution is themost commonly us...
To date, Bayesian inferences for the negative binomial distribution (NBD) have relied on computation...
Field of study: Statistics.Dr. Dongchu Sun, Thesis Supervisor.Includes vita."July 2018."In Bayesian ...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
This study considers two discrete distributions based on Bernoulli trials: the Binomial and the Nega...
In this paper, we propose a Bayesian method for modelling count data by Poisson, binomial or negativ...
Recent studies on biological data which vary somewhat from Poisson description have brought the nega...
A size biased generalized negative binomial distribution (SBGNBD) is defined and a recurrence relati...
A commonly used paradigm in modeling count data is to assume that individual counts are generated fr...
The beta-binomial model which is generated by a simple mixture model has been widely applied in the ...
In this paper, we propose a generalized likelihood ratio test to discernwhether a set of data fits a...
In areas such as health and insurance, there can be data limitations that may cause an identificatio...
Bayes negative binomial models under two different parameterizations are shown to be completely iden...
Research Doctorate - Doctor of Philosophy (PhD)Interval estimation of the Binomial parameter è, repr...
In regression analysis of counts, a lack of simple and efficient algorithms for posterior computatio...
In the statistical analysis of binary data, usually the binomial distribution is themost commonly us...