Partial distance correlation measures association between two random vectors with respect to a third random vector, analogous to, but more general than (linear) partial correlation. Distance correlation characterizes independence of random vectors in arbitrary dimension. Motivation for the definition is discussed. We introduce a Hilbert space of U-centered distance matrices in which squared distance covariance is the inner product. Simple computation of the sample partial distance correlation and definitions of the population coefficients are presented. Power of the test for zero partial distance correlation is compared with power of the partial correlation test and the partial Mantel test. © Springer International Publishing Switzerland 20...
Understanding and developing a correlation measure that can detect general dependencies is not only ...
For the last ten years, many measures and tests have been proposed for determining the independence ...
Statistical inference is a procedure of using collected observations to deduce properties of the und...
Abstract. Distance covariance and distance correlation are scalar coefficients that characterize ind...
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...
The concept of distance covariance/correlation was introduced recently to characterise dependence am...
Distance covariance is a quantity to measure the dependence of two random vectors. We show that the ...
The distance covariance of two random vectors is a measure of their dependence. The empirical dista...
Given an iid sequence of pairs of stochastic processes on the unit interval we construct a measure...
Distance correlation is a measure of the relationship between random vectors in arbitrary dimension....
Recently a new dependence measure, the distance correlation, has been proposed to measure the depend...
We investigate a distance metric, previously defined for the measurement of structured data, in the ...
The investigation of dependence structures plays a major role in contemporary statistics. During the...
Distance covariance and distance correlation have been widely adopted in measuring dependence of a p...
Understanding and developing a correlation measure that can detect general dependencies is not only ...
For the last ten years, many measures and tests have been proposed for determining the independence ...
Statistical inference is a procedure of using collected observations to deduce properties of the und...
Abstract. Distance covariance and distance correlation are scalar coefficients that characterize ind...
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...
The concept of distance covariance/correlation was introduced recently to characterise dependence am...
Distance covariance is a quantity to measure the dependence of two random vectors. We show that the ...
The distance covariance of two random vectors is a measure of their dependence. The empirical dista...
Given an iid sequence of pairs of stochastic processes on the unit interval we construct a measure...
Distance correlation is a measure of the relationship between random vectors in arbitrary dimension....
Recently a new dependence measure, the distance correlation, has been proposed to measure the depend...
We investigate a distance metric, previously defined for the measurement of structured data, in the ...
The investigation of dependence structures plays a major role in contemporary statistics. During the...
Distance covariance and distance correlation have been widely adopted in measuring dependence of a p...
Understanding and developing a correlation measure that can detect general dependencies is not only ...
For the last ten years, many measures and tests have been proposed for determining the independence ...
Statistical inference is a procedure of using collected observations to deduce properties of the und...