In this report a Bayesian solution to the problem of testing the equality of the means of k independent normal populations with unknown and arbitrary variances is provided. An important issue in the solution of this problem is the determination of groups with equal means, often solved by multiple comparisons, which can lead to results that are difficult to interpret. In order to avoid this drawback, we propose to treat all possible alternatives existing in the alternative hypothesis by considering the set of all possible configurations of the set of k means. This idea is closely related to the statistical pro-blem of cluster analysis. This allows us to reformulate the testing problem in terms of model selection. A hierarchical model is prop...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Bayesian analysis of variance (ANOVA) is gaining acceptance as an alternative to the hypothesis test...
In modern statistical and machine learning applications, there is an increasing need for developing ...
This study involves testing the equality of several normal means under unequal variances, which is t...
In the social sciences we are often interested in comparing models specified by parametric equality ...
This dissertation consists of three distinct but related research projects. First of all, we study t...
This article provides a Bayes factor approach to multiway analysis of variance (ANOVA) that allows r...
Analysis of variance (ANOVA) is a standard method for describing and estimating heterogeneity among ...
Researchers are frequently interested in testing variances of two independent populations. We often ...
© 2017 International Society for Bayesian Analysis. We consider Bayesian approaches for the hypothes...
The one-sided testing problem can be naturally formulated as the comparison between two nonnested mo...
In comparing characteristics of independent populations, researchers frequently expect a certain str...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Research has shown that independent groups often differ not only in their means, but also in their v...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Bayesian analysis of variance (ANOVA) is gaining acceptance as an alternative to the hypothesis test...
In modern statistical and machine learning applications, there is an increasing need for developing ...
This study involves testing the equality of several normal means under unequal variances, which is t...
In the social sciences we are often interested in comparing models specified by parametric equality ...
This dissertation consists of three distinct but related research projects. First of all, we study t...
This article provides a Bayes factor approach to multiway analysis of variance (ANOVA) that allows r...
Analysis of variance (ANOVA) is a standard method for describing and estimating heterogeneity among ...
Researchers are frequently interested in testing variances of two independent populations. We often ...
© 2017 International Society for Bayesian Analysis. We consider Bayesian approaches for the hypothes...
The one-sided testing problem can be naturally formulated as the comparison between two nonnested mo...
In comparing characteristics of independent populations, researchers frequently expect a certain str...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Research has shown that independent groups often differ not only in their means, but also in their v...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Bayesian analysis of variance (ANOVA) is gaining acceptance as an alternative to the hypothesis test...
In modern statistical and machine learning applications, there is an increasing need for developing ...