Log-normal linear regression models are popular in many fields of research.Bayesian estimation of the conditional mean of the dependent variable is problematic as many choices of the prior for the variance (on the log-scale) lead to posterior distributions with no finite moments. We propose a generalized inverse Gaussian prior for this variance and derive the conditions on the prior parameters that yield posterior distributions of the conditional mean of thedependent variable with finite moments up to a pre-specified order. The conditions depend on one of the three parameters of the suggested prior; the other two have an influence on inferences for small and medium sample sizes. A second goal of this paper is to discuss how to choose these param...
208 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.We consider the problem of re...
<p>The adoption of Zellner's g prior is a popular prior choice in Bayesian Model Averaging, although...
For the normal linear model variable selection problem, we propose selection criteria based on a ful...
Log-normal linear regression models are popular in many fields of research.Bayesian estimation of the...
The log-normal distribution is a popular model in biostatistics and other fields of statistics. Baye...
none2noThe log-normal distribution is a popular model in biostatistics as in many other fields of sta...
The lognormal distribution is a popular model in many fields of statistics. The mean, the mode, the ...
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is ass...
Consider a set of categorical variables where at least one of them is binary. The log-linear model t...
This paper proposes a new Bayesian approach for estimating, nonparametrically, functional parameters...
The log-normal distribution is very popular for modeling positive right-skewed data and represents a...
In this paper we employ ML-II ε-contaminated class of priors to study the sensitivity of Bayes Relia...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this paper, we considered a Bayesian hierarchical method using the hyper product inverse moment p...
208 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.We consider the problem of re...
<p>The adoption of Zellner's g prior is a popular prior choice in Bayesian Model Averaging, although...
For the normal linear model variable selection problem, we propose selection criteria based on a ful...
Log-normal linear regression models are popular in many fields of research.Bayesian estimation of the...
The log-normal distribution is a popular model in biostatistics and other fields of statistics. Baye...
none2noThe log-normal distribution is a popular model in biostatistics as in many other fields of sta...
The lognormal distribution is a popular model in many fields of statistics. The mean, the mode, the ...
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is ass...
Consider a set of categorical variables where at least one of them is binary. The log-linear model t...
This paper proposes a new Bayesian approach for estimating, nonparametrically, functional parameters...
The log-normal distribution is very popular for modeling positive right-skewed data and represents a...
In this paper we employ ML-II ε-contaminated class of priors to study the sensitivity of Bayes Relia...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this paper, we considered a Bayesian hierarchical method using the hyper product inverse moment p...
208 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.We consider the problem of re...
<p>The adoption of Zellner's g prior is a popular prior choice in Bayesian Model Averaging, although...
For the normal linear model variable selection problem, we propose selection criteria based on a ful...