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Generalized kernel distance covariance in high dimensions: non-null CLTs and power universality.
- Source :
-
Information & Inference: A Journal of the IMA . Sep2024, Vol. 13 Issue 3, p1-43. 43p. - Publication Year :
- 2024
-
Abstract
- Distance covariance is a popular dependence measure for two random vectors |$X$| and |$Y$| of possibly different dimensions and types. Recent years have witnessed concentrated efforts in the literature to understand the distributional properties of the sample distance covariance in a high-dimensional setting, with an exclusive emphasis on the null case that |$X$| and |$Y$| are independent. This paper derives the first non-null central limit theorem for the sample distance covariance, and the more general sample (Hilbert–Schmidt) kernel distance covariance in high dimensions, in the distributional class of |$(X,Y)$| with a separable covariance structure. The new non-null central limit theorem yields an asymptotically exact first-order power formula for the widely used generalized kernel distance correlation test of independence between |$X$| and |$Y$|. The power formula in particular unveils an interesting universality phenomenon: the power of the generalized kernel distance correlation test is completely determined by |$n\cdot \operatorname{dCor}^{2}(X,Y)/\sqrt{2}$| in the high-dimensional limit, regardless of a wide range of choices of the kernels and bandwidth parameters. Furthermore, this separation rate is also shown to be optimal in a minimax sense. The key step in the proof of the non-null central limit theorem is a precise expansion of the mean and variance of the sample distance covariance in high dimensions, which shows, among other things, that the non-null Gaussian approximation of the sample distance covariance involves a rather subtle interplay between the dimension-to-sample ratio and the dependence between |$X$| and |$Y$|. [ABSTRACT FROM AUTHOR]
- Subjects :
- *CENTRAL limit theorem
*RANDOM measures
*SAMPLING theorem
*BANDWIDTHS
Subjects
Details
- Language :
- English
- ISSN :
- 20498764
- Volume :
- 13
- Issue :
- 3
- Database :
- Academic Search Index
- Journal :
- Information & Inference: A Journal of the IMA
- Publication Type :
- Academic Journal
- Accession number :
- 179665097
- Full Text :
- https://doi.org/10.1093/imaiai/iaae017