The Bayes factors with improper noninformative priors are defined only up to arbitrary constants. So, it is known that Bayes factors are not well defined due to this arbitrariness in Bayesian hypothesis testing and model selections. The intrinsic Bayes factor by Berger and Pericchi (1996) and the fractional Bayes factor by O'Hagan (1995) have been used to overcome this problems. This paper suggests intrinsic priors for testing the equality of two lognormal means, whose Bayes factors are asymptotically equivalent to the corresponding fractional Bayes factors. Using proposed intrinsic priors, we demonstrate our results with real example and a simulated dataset
In comparing characteristics of independent populations, researchers frequently expect a certain str...
SUMMARY. For Hypothesis Testing and Model Selection, the Bayesian approach is at-tracting considerab...
Informative hypotheses are increasingly being used in psychological sciences because they adequately...
In Bayesian model selection or testing problems, default priors are typically improper; that is, the...
In the Bayesian approach to model selection and hypothesis testing, the Bayes factor plays a central...
Researchers are frequently interested in testing variances of two independent populations. We often ...
In the Bayesian approach to parametric model comparison, the use of improper priors is problematic d...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
Calculation of a suitable Bayes factor is required for Bayesian model comparison. The fractional Bay...
The Bayes factor (BF) is commonly used in parametric Bayesian model selection or hypothesis testing ...
The Intrinsic Bayes Factor (IBF) has been recently introduced by Berger and Pericchi (1996) for aut...
. Calculation of a suitable Bayes factor is required for Bayesian model comparison. In recent years,...
The techniques for selecting and evaluating prior distributions are studied over recent years which ...
SUMMARY. In Bayesian analysis with a “minimal ” data set and common noninformative priors, the (form...
A new method is suggested to evaluate the Bayes factor for choosing between two nested models using ...
In comparing characteristics of independent populations, researchers frequently expect a certain str...
SUMMARY. For Hypothesis Testing and Model Selection, the Bayesian approach is at-tracting considerab...
Informative hypotheses are increasingly being used in psychological sciences because they adequately...
In Bayesian model selection or testing problems, default priors are typically improper; that is, the...
In the Bayesian approach to model selection and hypothesis testing, the Bayes factor plays a central...
Researchers are frequently interested in testing variances of two independent populations. We often ...
In the Bayesian approach to parametric model comparison, the use of improper priors is problematic d...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
Calculation of a suitable Bayes factor is required for Bayesian model comparison. The fractional Bay...
The Bayes factor (BF) is commonly used in parametric Bayesian model selection or hypothesis testing ...
The Intrinsic Bayes Factor (IBF) has been recently introduced by Berger and Pericchi (1996) for aut...
. Calculation of a suitable Bayes factor is required for Bayesian model comparison. In recent years,...
The techniques for selecting and evaluating prior distributions are studied over recent years which ...
SUMMARY. In Bayesian analysis with a “minimal ” data set and common noninformative priors, the (form...
A new method is suggested to evaluate the Bayes factor for choosing between two nested models using ...
In comparing characteristics of independent populations, researchers frequently expect a certain str...
SUMMARY. For Hypothesis Testing and Model Selection, the Bayesian approach is at-tracting considerab...
Informative hypotheses are increasingly being used in psychological sciences because they adequately...