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Measuring and testing dependence by correlation of distances

About

Distance correlation is a new measure of dependence between random vectors. Distance covariance and distance correlation are analogous to product-moment covariance and correlation, but unlike the classical definition of correlation, distance correlation is zero only if the random vectors are independent. The empirical distance dependence measures are based on certain Euclidean distances between sample elements rather than sample moments, yet have a compact representation analogous to the classical covariance and correlation. Asymptotic properties and applications in testing independence are discussed. Implementation of the test and Monte Carlo results are also presented.

G\'abor J. Sz\'ekely, Maria L. Rizzo, Nail K. Bakirov• 2008

Related benchmarks

TaskDatasetResultRank
Prediction-grounded correlation with output difference (JSD)SST-2
Spearman Correlation0.58
145
Correlation to Accuracy DifferenceCora
Correlation Coefficient0.17
117
Prediction-grounded correlation with accuracy differenceImageNet-100
Spearman Correlation0.31
111
Correlation to Model Behavior DifferencesMNLI
Accuracy Correlation0.25
93
Correlation to Accuracy DifferenceOgbn-arxiv
Correlation Coefficient0.15
93
Correlation to Accuracy DifferenceFlickr
Correlation Coefficient0.42
92
Correlation to Accuracy Difference (Test 1)ImageNet-100 1.0 (test)--
80
Prediction-grounded correlation with accuracy differenceSST-2
Spearman Correlation0.49
54
Graph similarity groundingFlickr
Accuracy Correlation0.42
31
Vision similarity groundingImageNet-100
Accuracy Correlation0.31
31
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