The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is assumed for data. In fact, it is known that a particular care is required in this context, since the most common prior distributions for the variance in log scale produce posteriors for the log-normal mean which do not have finite moments. Hence, classical summary measures of the posterior such as expectation and variance cannot be computed for these distributions. The thesis is aimed at proposing solutions to carry out Bayesian inference inside a mathematically coherent framework, focusing on the estimation of two quantities: log-normal quantiles (first part of the thesis) and conditioned expectations under a general log-normal linear mixed mo...
In this paper, we used simulations to compare the performance of classical and Bayesian estimations ...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this study, we compare the parameter estimates of the mixed logit model obtained with maximum lik...
The log-normal distribution is a popular model in biostatistics and other fields of statistics. Baye...
Bayesian inference under log-normality assumption must be performed very carefully. In fact, under t...
The log-normal distribution is very popular for modeling positive right-skewed data and represents a...
Krishnamoorthy, Mathewand Ramachandran (2006) developed a method to draw inference on the mean and v...
Log-normal linear regression models are popular in many fields of research.Bayesian estimation of the...
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
The log-normal distribution is a popular model in many areas, especially in biostatistics and surviv...
In this paper we derive the Bayes estimates of the location parameter of normal and lognormal distri...
Lognormal distribution has many applications. The past research papers concentrated on the estimatio...
The lognormal distribution is a popular model in many fields of statistics. The mean, the mode, the ...
The log-normal distribution is a popular model in biostatistics as in many other fields of statistics...
The standard model for the analysis of rates is the log-linear model where counts are assumed to fol...
In this paper, we used simulations to compare the performance of classical and Bayesian estimations ...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this study, we compare the parameter estimates of the mixed logit model obtained with maximum lik...
The log-normal distribution is a popular model in biostatistics and other fields of statistics. Baye...
Bayesian inference under log-normality assumption must be performed very carefully. In fact, under t...
The log-normal distribution is very popular for modeling positive right-skewed data and represents a...
Krishnamoorthy, Mathewand Ramachandran (2006) developed a method to draw inference on the mean and v...
Log-normal linear regression models are popular in many fields of research.Bayesian estimation of the...
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
The log-normal distribution is a popular model in many areas, especially in biostatistics and surviv...
In this paper we derive the Bayes estimates of the location parameter of normal and lognormal distri...
Lognormal distribution has many applications. The past research papers concentrated on the estimatio...
The lognormal distribution is a popular model in many fields of statistics. The mean, the mode, the ...
The log-normal distribution is a popular model in biostatistics as in many other fields of statistics...
The standard model for the analysis of rates is the log-linear model where counts are assumed to fol...
In this paper, we used simulations to compare the performance of classical and Bayesian estimations ...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this study, we compare the parameter estimates of the mixed logit model obtained with maximum lik...