The gamma distribution arises frequently in Bayesian models, but there is not an easy-to-use conjugate prior for the shape parameter of a gamma. This inconvenience is usually dealt with by using either Metropolis–Hastings moves, rejection sampling methods, or numerical integration. However, in models with a large number of shape parameters, these existing methods are slower or more complicated than one would like, making them burdensome in practice. It turns out that the full conditional distribution of the gamma shape parameter is well approximated by a gamma distribution, even for small sample sizes, when the prior on the shape parameter is also a gamma distribution. This article introduces a quick and easy algorithm for finding a gamma d...
We extend the 2-parameter Weibull to the generalized gamma distribution by adding a new partial para...
Best and Gipps (1974) showed that the negative binomial distribution can be approximated closely by ...
This paper discusses new approaches to parameter estimation of gamma distribution based on represent...
In this paper, we introduce a new and efficient data augmentation approach to the posterior inferenc...
The Bayesian model selection procedures for the shape parameter of gamma distribution are proposed i...
We provide an estimation procedure of the two-parameter Gamma distribution based on the Algorithmic ...
It is well-known that maximum likelihood (ML) estimators of the two parame- ters in a Gamma distribu...
This article introduces a new probability distribution capable of modeling positive data that presen...
This thesis is an analysis of conditional sampling from a gamma distribution given sufficient statis...
The Gamma distribution is well-known and widely used in many signal processing and communica-tions a...
ABSTRACT In this paper, we discuss computational aspects to obtain accurate inferences for the param...
The art of fitting gamma distributions robustly is described. In particular we compare methods of fi...
In various applications, we deal with high-dimensional positive-valued data that often exhibits spar...
The problem of estimation of an unknown shape parameter under the sample drawn from the gamma distr...
AbstractBounds for the maximum likelihood estimator (MLE) of the shape parameter of the two-paramete...
We extend the 2-parameter Weibull to the generalized gamma distribution by adding a new partial para...
Best and Gipps (1974) showed that the negative binomial distribution can be approximated closely by ...
This paper discusses new approaches to parameter estimation of gamma distribution based on represent...
In this paper, we introduce a new and efficient data augmentation approach to the posterior inferenc...
The Bayesian model selection procedures for the shape parameter of gamma distribution are proposed i...
We provide an estimation procedure of the two-parameter Gamma distribution based on the Algorithmic ...
It is well-known that maximum likelihood (ML) estimators of the two parame- ters in a Gamma distribu...
This article introduces a new probability distribution capable of modeling positive data that presen...
This thesis is an analysis of conditional sampling from a gamma distribution given sufficient statis...
The Gamma distribution is well-known and widely used in many signal processing and communica-tions a...
ABSTRACT In this paper, we discuss computational aspects to obtain accurate inferences for the param...
The art of fitting gamma distributions robustly is described. In particular we compare methods of fi...
In various applications, we deal with high-dimensional positive-valued data that often exhibits spar...
The problem of estimation of an unknown shape parameter under the sample drawn from the gamma distr...
AbstractBounds for the maximum likelihood estimator (MLE) of the shape parameter of the two-paramete...
We extend the 2-parameter Weibull to the generalized gamma distribution by adding a new partial para...
Best and Gipps (1974) showed that the negative binomial distribution can be approximated closely by ...
This paper discusses new approaches to parameter estimation of gamma distribution based on represent...