To date, Bayesian inferences for the negative binomial distribution (NBD) have relied on computationally intensive numerical methods (e.g., Markov chain Monte Carlo) as it is thought that the posterior densities of interest are not amenable to closed-form integration. In this article, we present a “closed-form” solution to the Bayesian inference problem for the NBD that can be written as a sum of polynomial terms. The key insight is to approximate the ratio of two gamma functions using a polynomial expansion, which then allows for the use of a conjugate prior. Given this approximation, we arrive at closed-form expressions for the moments of both the marginal posterior densities and the predictive distribution by integrating the terms of the...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
This paper introduces a new approach to Bayesian nonparametric inference for densities on the hyper...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
To date, Bayesian inferences for the negative binomial distribution (NBD) have relied on computation...
A commonly used paradigm in modeling count data is to assume that individual counts are generated fr...
2000 Mathematics Subject Classification: 62F15.The Negative Binomial model, which is generated by a ...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
Field of study: Statistics.Dr. Dongchu Sun, Thesis Supervisor.Includes vita."July 2018."In Bayesian ...
In regression analysis of counts, a lack of simple and efficient algorithms for posterior computatio...
Bayesian nonparametric (BNP or NP Bayes) methods have enjoyed great strides forward in recent years....
In this paper, we propose a generalized likelihood ratio test to discernwhether a set of data fits a...
By developing data augmentation methods unique to the negative binomial (NB) distribution, we unite ...
This study considers two discrete distributions based on Bernoulli trials: the Binomial and the Nega...
A size biased generalized negative binomial distribution (SBGNBD) is defined and a recurrence relati...
Graduation date: 1992In Bayesian analysis, means are commonly used to\ud summarize Bayesian posterio...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
This paper introduces a new approach to Bayesian nonparametric inference for densities on the hyper...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...
To date, Bayesian inferences for the negative binomial distribution (NBD) have relied on computation...
A commonly used paradigm in modeling count data is to assume that individual counts are generated fr...
2000 Mathematics Subject Classification: 62F15.The Negative Binomial model, which is generated by a ...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
Field of study: Statistics.Dr. Dongchu Sun, Thesis Supervisor.Includes vita."July 2018."In Bayesian ...
In regression analysis of counts, a lack of simple and efficient algorithms for posterior computatio...
Bayesian nonparametric (BNP or NP Bayes) methods have enjoyed great strides forward in recent years....
In this paper, we propose a generalized likelihood ratio test to discernwhether a set of data fits a...
By developing data augmentation methods unique to the negative binomial (NB) distribution, we unite ...
This study considers two discrete distributions based on Bernoulli trials: the Binomial and the Nega...
A size biased generalized negative binomial distribution (SBGNBD) is defined and a recurrence relati...
Graduation date: 1992In Bayesian analysis, means are commonly used to\ud summarize Bayesian posterio...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
This paper introduces a new approach to Bayesian nonparametric inference for densities on the hyper...
We consider robust parametric procedures for univariate discrete distributions, focusing on the nega...