We consider the problem of testing pairwise dependence for stationary time series. For this, we suggest the use of a Box–Ljung-type test statistic that is formed after calculating the distance covariance function among pairs of observations. The distance covariance function is a suitable measure for detecting dependencies between observations as it is based on the distance between the characteristic function of the joint distribution of the random variables and the product of the marginals. We show that, under the null hypothesis of independence and under mild regularity conditions, the test statistic converges to a normal random variable. The results are complemented by several examples. This article has supplementary material online
Recently a new dependence measure, the distance correlation, has been proposed to measure the depend...
Distance covariance is a quantity to measure the dependence of two random vectors. We show that the ...
The distance covariance function is a new measure of dependence between random vectors. We drop the ...
The study of dependence for high dimensional data originates in many different areas of contemporary...
This paper proposes an asymptotic one-sided N(0, 1) test for independence between two stationary tim...
In many statistical modeling frameworks, goodness-of-fit tests are typically administered to the est...
DISTANCE COVARIANCE FOR STOCHASTIC PROCESSESThe distance covariance of two random vectors is ...
The concept of distance covariance/correlation was introduced recently to characterise dependence am...
A one-sided asymptotically normal test for independence between two stationary time series is propos...
We propose a novel method for testing serial independence of object-valued time series in metric spa...
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...
We introduce the matrix multivariate auto-distance covariance and correlation functions for time ser...
The Ljung-Box test is typically used to test serial independence even if, by construction, it is gen...
We use the sample covariation to develop asymptotic tests for inde-pendence for data in the normal d...
Recently a new dependence measure, the distance correlation, has been proposed to measure the depend...
Distance covariance is a quantity to measure the dependence of two random vectors. We show that the ...
The distance covariance function is a new measure of dependence between random vectors. We drop the ...
The study of dependence for high dimensional data originates in many different areas of contemporary...
This paper proposes an asymptotic one-sided N(0, 1) test for independence between two stationary tim...
In many statistical modeling frameworks, goodness-of-fit tests are typically administered to the est...
DISTANCE COVARIANCE FOR STOCHASTIC PROCESSESThe distance covariance of two random vectors is ...
The concept of distance covariance/correlation was introduced recently to characterise dependence am...
A one-sided asymptotically normal test for independence between two stationary time series is propos...
We propose a novel method for testing serial independence of object-valued time series in metric spa...
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...
We introduce the matrix multivariate auto-distance covariance and correlation functions for time ser...
The Ljung-Box test is typically used to test serial independence even if, by construction, it is gen...
We use the sample covariation to develop asymptotic tests for inde-pendence for data in the normal d...
Recently a new dependence measure, the distance correlation, has been proposed to measure the depend...
Distance covariance is a quantity to measure the dependence of two random vectors. We show that the ...
The distance covariance function is a new measure of dependence between random vectors. We drop the ...