Conditional Kendall's tau is a measure of dependence between two random variables, conditionally on some covariates. We assume a regression-type relationship between conditional Kendall's tau and some covariates, in a parametric setting with a large number of transformations of a small number of regressors. This model may be sparse, and the underlying parameter is estimated through a penalized criterion and a two-step inference procedure. We prove non-asymptotic bounds with explicit constants that hold with high probabilities. We derive the consistency of the latter estimator, its asymptotic law and some oracle properties. Some simulations and applications to real data conclude the paper
Let Z1,..., Zn be a random sample of size n2 from a d-variate continuous distribution function H, an...
Necessary and sufficient conditions for consistency of a simple estimator of Kendall's tau under biv...
We study how to measure and test for differences in dependence for small and large realizations of t...
We study nonparametric estimators of conditional Kendall's tau, a measure of concordance between two...
We study nonparametric estimators of conditional Kendall’s tau, a measure of concordance between two...
The authors show how Kendall's tau can be adapted to test against serial dependence in a univariate ...
<div><p>In this article, we focus on estimation and test of conditional Kendall's tau under semi-com...
Kendall’s tau and conditional Kendall’s tau matrices are multivariate (conditional) dependence measu...
Dependence measures are often used in practice in order to assess the quality of a regression model....
The authors show how Kendall's tau can be adapted to test against serial dependence in a univariate ...
This paper is concerned with inference about the dependence or association between two random variab...
AbstractLetZ1, …, Znbe a random sample of sizen⩾2 from ad-variate continuous distribution functionH,...
A popular nonparametric measure of a monotone relation between two variables is Kendall's tau. Origi...
Several procedures have been recently proposed to test the simplifying assumption for conditional co...
In this paper the interest is to estimate the dependence between two variables conditionally upon a ...
Let Z1,..., Zn be a random sample of size n2 from a d-variate continuous distribution function H, an...
Necessary and sufficient conditions for consistency of a simple estimator of Kendall's tau under biv...
We study how to measure and test for differences in dependence for small and large realizations of t...
We study nonparametric estimators of conditional Kendall's tau, a measure of concordance between two...
We study nonparametric estimators of conditional Kendall’s tau, a measure of concordance between two...
The authors show how Kendall's tau can be adapted to test against serial dependence in a univariate ...
<div><p>In this article, we focus on estimation and test of conditional Kendall's tau under semi-com...
Kendall’s tau and conditional Kendall’s tau matrices are multivariate (conditional) dependence measu...
Dependence measures are often used in practice in order to assess the quality of a regression model....
The authors show how Kendall's tau can be adapted to test against serial dependence in a univariate ...
This paper is concerned with inference about the dependence or association between two random variab...
AbstractLetZ1, …, Znbe a random sample of sizen⩾2 from ad-variate continuous distribution functionH,...
A popular nonparametric measure of a monotone relation between two variables is Kendall's tau. Origi...
Several procedures have been recently proposed to test the simplifying assumption for conditional co...
In this paper the interest is to estimate the dependence between two variables conditionally upon a ...
Let Z1,..., Zn be a random sample of size n2 from a d-variate continuous distribution function H, an...
Necessary and sufficient conditions for consistency of a simple estimator of Kendall's tau under biv...
We study how to measure and test for differences in dependence for small and large realizations of t...