ABSTRACT In this paper, we discuss computational aspects to obtain accurate inferences for the parameters of the generalized gamma (GG) distribution. Usually, the solution of the maximum likelihood estimators (MLE) for the GG distribution have no stable behavior depending on large sample sizes and good initial values to be used in the iterative numerical algorithms. From a Bayesian approach, this problem remains, but now related to the choice of prior distributions for the parameters of this model. We presented some exploratory techniques to obtain good initial values to be used in the iterative procedures and also to elicited appropriate informative priors. Finally, our proposed methodology is also considered for data sets in the presence ...
WOS: 000331675500002The generalized gamma distribution (GGD) is a very popular distribution since it...
Özsoy, Volkan Soner ( Aksaray, Yazar )The generalized gamma distribution (GGD) is a popular distrib...
We explore computational aspects of likelihood maximisation for the gen-eralised gamma distribution....
We explore computational aspects of likelihood maximization for the generalized gamma (GG) distribut...
We explore computational aspects of likelihood maximization for the generalized gamma (GG) distribut...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
This article focuses on the parameter estimation of the generalized gamma distribution. Faced to all...
This article focuses on the parameter estimation of the generalized gamma distribution. Faced to all...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
In this paper, some structural properties of Generalized Gamma Distribution (GGD) have been establis...
The paper aims to propose a family of estimators for the Bayesian analysis of three parametric gener...
It is well-known that maximum likelihood (ML) estimators of the two parame- ters in a Gamma distribu...
The most important goals of this research project are related to the study of computational aspects ...
In this paper, we propose to obtain Bayesian estimators of unknown parameters of a three parameter g...
WOS: 000331675500002The generalized gamma distribution (GGD) is a very popular distribution since it...
Özsoy, Volkan Soner ( Aksaray, Yazar )The generalized gamma distribution (GGD) is a popular distrib...
We explore computational aspects of likelihood maximisation for the gen-eralised gamma distribution....
We explore computational aspects of likelihood maximization for the generalized gamma (GG) distribut...
We explore computational aspects of likelihood maximization for the generalized gamma (GG) distribut...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
This article focuses on the parameter estimation of the generalized gamma distribution. Faced to all...
This article focuses on the parameter estimation of the generalized gamma distribution. Faced to all...
International audienceThis article focuses on the parameter estimation of the generalized gamma dist...
In this paper, some structural properties of Generalized Gamma Distribution (GGD) have been establis...
The paper aims to propose a family of estimators for the Bayesian analysis of three parametric gener...
It is well-known that maximum likelihood (ML) estimators of the two parame- ters in a Gamma distribu...
The most important goals of this research project are related to the study of computational aspects ...
In this paper, we propose to obtain Bayesian estimators of unknown parameters of a three parameter g...
WOS: 000331675500002The generalized gamma distribution (GGD) is a very popular distribution since it...
Özsoy, Volkan Soner ( Aksaray, Yazar )The generalized gamma distribution (GGD) is a popular distrib...
We explore computational aspects of likelihood maximisation for the gen-eralised gamma distribution....