A new method is proposed to quantify significance in finite mixture models. The basis for this new methodology is an approach that calculates the p-value for testing a simpler model against a more complicated one in a way that is able to obviate the failure of regularity conditions for likelihood ratio tests. The developed testing procedure allows for pairwise comparison of any two mixture models with failure to reject the null hypothesis implying insignificant likelihood improvement under the more complex model. This leads to a comprehensive tool called a quantitation map which displays significance and quantitatively summarizes all model comparisons. This map can be used, among other applications, to decide on the best among a set of cand...
textabstractFinite mixture distributions are a weighted average of a ¯nite number of distributions. ...
In this article, a new approach for model specification is proposed. The method allows to choose the...
Abstract This thesis is concerned with robust estimation of the parameters of statistical models. Al...
A new method is proposed to quantify significance in finite mixture models. The basis for this new m...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
The Fully Bayesian Significance Test (FBST) is a coherent Bayesian significance test for sharp hypot...
Estimating the model evidence - or mariginal likelihood of the data - is a notoriously difficult tas...
An alternative to using normally distributed random effects in modeling clustered binary and ordered...
Finite mixture models are often used in statistical applications when the population under study is ...
Finite mixture models have a long history in statistics, having been used to model population hetero...
October 2012This paper considers likelihood-based testing of the null hypothesis of m0 components ag...
The Fully Bayesian Significance Test (FBST) is a coherent Bayesian significance test for sharp hypot...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
This paper considers likelihood-based testing of the null hypothesis of m0 components against the al...
Finite mixture distributions are used in applications because of their ability to support heterogene...
textabstractFinite mixture distributions are a weighted average of a ¯nite number of distributions. ...
In this article, a new approach for model specification is proposed. The method allows to choose the...
Abstract This thesis is concerned with robust estimation of the parameters of statistical models. Al...
A new method is proposed to quantify significance in finite mixture models. The basis for this new m...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
The Fully Bayesian Significance Test (FBST) is a coherent Bayesian significance test for sharp hypot...
Estimating the model evidence - or mariginal likelihood of the data - is a notoriously difficult tas...
An alternative to using normally distributed random effects in modeling clustered binary and ordered...
Finite mixture models are often used in statistical applications when the population under study is ...
Finite mixture models have a long history in statistics, having been used to model population hetero...
October 2012This paper considers likelihood-based testing of the null hypothesis of m0 components ag...
The Fully Bayesian Significance Test (FBST) is a coherent Bayesian significance test for sharp hypot...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
This paper considers likelihood-based testing of the null hypothesis of m0 components against the al...
Finite mixture distributions are used in applications because of their ability to support heterogene...
textabstractFinite mixture distributions are a weighted average of a ¯nite number of distributions. ...
In this article, a new approach for model specification is proposed. The method allows to choose the...
Abstract This thesis is concerned with robust estimation of the parameters of statistical models. Al...