The dissertation present novel statistically and computationally efficient hypothesis tests for relative dependency, similarity, and precision matrix estimation. The key methodology adopted in this thesis is the class of \ustat estimator. The class of \ustat allows a minimum-variance unbiased estimation of a parameter. We make use of asymptotic distributions and strong consistency of the \ustat estimator to develop novel non-parametric statistical hypothesis tests. In the first part of the thesis, we will focus mainly focus on developing a novel non-parametric statistical hypothesis test for relative dependency. Test of dependence are important tools in statistical analysis. For many problems in data analysis, however, the question of multi...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
Through computer simulations, we research several different measures of dependence, including Pearso...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...
Bounliphone W., ''Statistically and computationally efficient hypothesis tests for similarity and de...
The dissertation presents novel statistically and computationally efficient hypothesis tests for rel...
Cette thèse présente de nouveaux tests d’hypothèses statistiques efficaces pour la relative similari...
We introduce two novel non-parametric statistical hypothesis tests. The first test, called the relat...
International audienceWe describe a novel non-parametric statistical hypothesis test of relative dep...
International audienceTests of dependence are an important tool in statistical analysis, and are wid...
This thesis contributes to the field of nonparametric hypothesis testing (i.e. two-sample and indepe...
The simple correlation coefficient between two variables has been generalized to measures of associa...
The simple correlation coefficient between two variables has been generalized to measures of associa...
Dependence measures and tests for independence have recently attracted a lot of attention, because t...
Bounliphone W., Belilovsky E., Blaschko M., Antonoglou I., Gretton A., ''A test of relative similari...
<div><p>Dependence measures and tests for independence have recently attracted a lot of attention, b...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
Through computer simulations, we research several different measures of dependence, including Pearso...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...
Bounliphone W., ''Statistically and computationally efficient hypothesis tests for similarity and de...
The dissertation presents novel statistically and computationally efficient hypothesis tests for rel...
Cette thèse présente de nouveaux tests d’hypothèses statistiques efficaces pour la relative similari...
We introduce two novel non-parametric statistical hypothesis tests. The first test, called the relat...
International audienceWe describe a novel non-parametric statistical hypothesis test of relative dep...
International audienceTests of dependence are an important tool in statistical analysis, and are wid...
This thesis contributes to the field of nonparametric hypothesis testing (i.e. two-sample and indepe...
The simple correlation coefficient between two variables has been generalized to measures of associa...
The simple correlation coefficient between two variables has been generalized to measures of associa...
Dependence measures and tests for independence have recently attracted a lot of attention, because t...
Bounliphone W., Belilovsky E., Blaschko M., Antonoglou I., Gretton A., ''A test of relative similari...
<div><p>Dependence measures and tests for independence have recently attracted a lot of attention, b...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
Through computer simulations, we research several different measures of dependence, including Pearso...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...