pith. sign in

Hypothesis testing using pairwise distances and associated kernels (with Appendix)

1 Pith paper cite this work. Polarity classification is still indexing.

1 Pith paper citing it
abstract

We provide a unifying framework linking two classes of statistics used in two-sample and independence testing: on the one hand, the energy distances and distance covariances from the statistics literature; on the other, distances between embeddings of distributions to reproducing kernel Hilbert spaces (RKHS), as established in machine learning. The equivalence holds when energy distances are computed with semimetrics of negative type, in which case a kernel may be defined such that the RKHS distance between distributions corresponds exactly to the energy distance. We determine the class of probability distributions for which kernels induced by semimetrics are characteristic (that is, for which embeddings of the distributions to an RKHS are injective). Finally, we investigate the performance of this family of kernels in two-sample and independence tests: we show in particular that the energy distance most commonly employed in statistics is just one member of a parametric family of kernels, and that other choices from this family can yield more powerful tests.

fields

stat.ME 1

years

2026 1

verdicts

UNVERDICTED 1

clear filters

representative citing papers

Bayesian Global Fr\'echet Regression via Weak Conditional Expectations

stat.ME · 2026-06-06 · unverdicted · novelty 7.0

A Bayesian global Fréchet regression method is introduced via a Fréchet Bayes rule that reduces the problem to scalar tasks, allows prior-data interpolation, and remains valid under moment conditions using weak conditional expectations.

citing papers explorer

Showing 1 of 1 citing paper after filters.

  • Bayesian Global Fr\'echet Regression via Weak Conditional Expectations stat.ME · 2026-06-06 · unverdicted · none · ref 64 · internal anchor

    A Bayesian global Fréchet regression method is introduced via a Fréchet Bayes rule that reduces the problem to scalar tasks, allows prior-data interpolation, and remains valid under moment conditions using weak conditional expectations.