We provide an estimation procedure of the two-parameter Gamma distribution based on the Algorithmic Inference approach. As a key feature of this approach, we compute the joint probability distribution of these parameters without assuming any prior. To this end, we propose a numerical algorithm which is often beneficial of a highly efficient speed up based on an approximate analytical expression of the probability distribution. We contrast our interval and point estimates with those recently obtained in Son and Oh (2006) for the same problem. From this benchmark we realize that our estimates are both unbiased and more accurate, albeit more dispersed, in some cases, than the competitors' methods, where the dispersion drawback is notably mitig...
WOS: 000331675500002The generalized gamma distribution (GGD) is a very popular distribution since it...
The gamma distribution is one of the commonly used statistical distribution in reliability. While ma...
The art of fitting gamma distributions robustly is described. In particular we compare methods of fi...
ABSTRACT In this paper, we discuss computational aspects to obtain accurate inferences for the param...
The gamma distribution arises frequently in Bayesian models, but there is not an easy-to-use conjuga...
We explore computational aspects of likelihood maximisation for the gen-eralised gamma distribution....
It is well-known that maximum likelihood (ML) estimators of the two parame- ters in a Gamma distribu...
We explore computational aspects of likelihood maximization for the generalized gamma (GG) distribut...
AbstractBounds for the maximum likelihood estimator (MLE) of the shape parameter of the two-paramete...
In this paper we consider the generalized gamma distribution as introduced in Gåsemyr and Natvig (19...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
Inferential methods for constructing an upper confidence limit for an upper percentile and for findi...
This article focuses on the parameter estimation of the generalized gamma distribution. Faced to all...
This paper discusses new approaches to parameter estimation of gamma distribution based on represent...
We investigate a class of prior models, called Gamma chains, for modelling depedicies in time-freque...
WOS: 000331675500002The generalized gamma distribution (GGD) is a very popular distribution since it...
The gamma distribution is one of the commonly used statistical distribution in reliability. While ma...
The art of fitting gamma distributions robustly is described. In particular we compare methods of fi...
ABSTRACT In this paper, we discuss computational aspects to obtain accurate inferences for the param...
The gamma distribution arises frequently in Bayesian models, but there is not an easy-to-use conjuga...
We explore computational aspects of likelihood maximisation for the gen-eralised gamma distribution....
It is well-known that maximum likelihood (ML) estimators of the two parame- ters in a Gamma distribu...
We explore computational aspects of likelihood maximization for the generalized gamma (GG) distribut...
AbstractBounds for the maximum likelihood estimator (MLE) of the shape parameter of the two-paramete...
In this paper we consider the generalized gamma distribution as introduced in Gåsemyr and Natvig (19...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
Inferential methods for constructing an upper confidence limit for an upper percentile and for findi...
This article focuses on the parameter estimation of the generalized gamma distribution. Faced to all...
This paper discusses new approaches to parameter estimation of gamma distribution based on represent...
We investigate a class of prior models, called Gamma chains, for modelling depedicies in time-freque...
WOS: 000331675500002The generalized gamma distribution (GGD) is a very popular distribution since it...
The gamma distribution is one of the commonly used statistical distribution in reliability. While ma...
The art of fitting gamma distributions robustly is described. In particular we compare methods of fi...