Representations of probability measures in reproducing kernel Hilbert spaces provide a flexible framework for fully nonparametric hypothesis tests of independence, which can capture any type of departure from independence, including nonlinear associations and multivariate interactions. However, these approaches come with an at least quadratic computational cost in the number of observations, which can be prohibitive in many applications. Arguably, it is exactly in such large-scale datasets that capturing any type of dependence is of interest, so striking a favourable tradeoff between computational efficiency and test performance for kernel independence tests would have a direct impact on their applicability in practice. In this contribution...
The main goal of this thesis is to develop statistical methods for non-parametric independence testi...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
Representations of probability measures in reproducing kernel Hilbert spaces provide a flexible fram...
This thesis contributes to the field of nonparametric hypothesis testing (i.e. two-sample and indepe...
Although kernel measures of independence have been widely applied in machine learning (notably in ke...
Whereas kernel measures of independence have been widely applied in machine learning (notably in ker...
Three simple and explicit procedures for testing the independence of two multi-dimensional random va...
Three simple and explicit procedures for testing the independence of two multi-dimensional random va...
This paper presents a quick test of independence against a high-dimensional alternative. The test is...
International audienceA new computationally efficient dependence measure, and an adaptive statistica...
Three simple and explicit procedures for testing the independence of two multi-dimensional random va...
We propose an independence criterion based on the eigenspectrum of covariance operators in reproduci...
Dependence measures based on reproducing kernel Hilbert spaces, also known as Hilbert-Schmidt Indepe...
We introduce two new functionals, the constrained covariance and the kernel mutual information, to m...
The main goal of this thesis is to develop statistical methods for non-parametric independence testi...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
Representations of probability measures in reproducing kernel Hilbert spaces provide a flexible fram...
This thesis contributes to the field of nonparametric hypothesis testing (i.e. two-sample and indepe...
Although kernel measures of independence have been widely applied in machine learning (notably in ke...
Whereas kernel measures of independence have been widely applied in machine learning (notably in ker...
Three simple and explicit procedures for testing the independence of two multi-dimensional random va...
Three simple and explicit procedures for testing the independence of two multi-dimensional random va...
This paper presents a quick test of independence against a high-dimensional alternative. The test is...
International audienceA new computationally efficient dependence measure, and an adaptive statistica...
Three simple and explicit procedures for testing the independence of two multi-dimensional random va...
We propose an independence criterion based on the eigenspectrum of covariance operators in reproduci...
Dependence measures based on reproducing kernel Hilbert spaces, also known as Hilbert-Schmidt Indepe...
We introduce two new functionals, the constrained covariance and the kernel mutual information, to m...
The main goal of this thesis is to develop statistical methods for non-parametric independence testi...
This paper is about two related decision theoretic problems, nonparametric two-sample testing and in...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...