The log-normal distribution is a popular model in biostatistics and other fields of statistics. Bayesian inference on the mean and median of the distribution is problematic because, for many popular choices of the prior for the variance (on the log-scale) parameter, the posterior distribution has no finite moments, leading to Bayes estimators with infinite expected loss for the most common choices of the loss function. We propose a generalized inverse Gaussian prior for the variance parameter, that leads to a log-generalized hyperbolic posterior, for which it is easy to calculate quantiles and moments, provided that they exist. We derive the constraints on the prior parameters that yield finite posterior moments of order r. We investigate t...
The aim of the present article is to find the better estimator for the parameter of logarithmic tran...
[[abstract]]In this paper, we consider the problems of Bayesian estimation and prediction for lognor...
[[abstract]]In this paper we consider the problems of estimation and prediction when observed data f...
The log-normal distribution is a popular model in biostatistics and other fields of statistics. Baye...
The log-normal distribution is a popular model in biostatistics as in many other fields of statistics...
The lognormal distribution is a popular model in many fields of statistics. The mean, the mode, the ...
Log-normal linear regression models are popular in many \ufb01elds of research.Bayesian estimation o...
The log-normal distribution is very popular for modeling positive right-skewed data and represents a...
Bayesian inference under log-normality assumption must be performed very carefully. In fact, under t...
The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is ass...
In this research, Log logistic distribution under Bayesian paradigm is studied. Posterior distributi...
The exponential-logarithmic is a new lifetime distribution with decreasing failure rate and interest...
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
In this paper we develop approximate Bayes estimators of the two parameters logistic distribution. L...
208 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.We consider the problem of re...
The aim of the present article is to find the better estimator for the parameter of logarithmic tran...
[[abstract]]In this paper, we consider the problems of Bayesian estimation and prediction for lognor...
[[abstract]]In this paper we consider the problems of estimation and prediction when observed data f...
The log-normal distribution is a popular model in biostatistics and other fields of statistics. Baye...
The log-normal distribution is a popular model in biostatistics as in many other fields of statistics...
The lognormal distribution is a popular model in many fields of statistics. The mean, the mode, the ...
Log-normal linear regression models are popular in many \ufb01elds of research.Bayesian estimation o...
The log-normal distribution is very popular for modeling positive right-skewed data and represents a...
Bayesian inference under log-normality assumption must be performed very carefully. In fact, under t...
The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is ass...
In this research, Log logistic distribution under Bayesian paradigm is studied. Posterior distributi...
The exponential-logarithmic is a new lifetime distribution with decreasing failure rate and interest...
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
In this paper we develop approximate Bayes estimators of the two parameters logistic distribution. L...
208 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.We consider the problem of re...
The aim of the present article is to find the better estimator for the parameter of logarithmic tran...
[[abstract]]In this paper, we consider the problems of Bayesian estimation and prediction for lognor...
[[abstract]]In this paper we consider the problems of estimation and prediction when observed data f...