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EQUIVALENCE OF DISTANCE-BASED AND RKHS-BASED STATISTICS IN HYPOTHESIS TESTING
by
Sriperumbudur, Bharath
, Fukumizu, Kenji
, Sejdinovic, Dino
, Gretton, Arthur
in
46E22
/ 62G10
/ 62H20
/ 68Q32
/ Artificial intelligence
/ Covariance
/ distance covariance
/ Eigenfunctions
/ Embeddings
/ Hilbert space
/ Hilbert spaces
/ Hypothesis testing
/ independence testing
/ Machine learning
/ Probabilities
/ Probability distribution
/ Random variables
/ Reproducing kernel Hilbert spaces
/ Statistical analysis
/ Statistical theories
/ Statistical variance
/ Statistics
/ Studies
/ two-sample testing
2013
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EQUIVALENCE OF DISTANCE-BASED AND RKHS-BASED STATISTICS IN HYPOTHESIS TESTING
by
Sriperumbudur, Bharath
, Fukumizu, Kenji
, Sejdinovic, Dino
, Gretton, Arthur
in
46E22
/ 62G10
/ 62H20
/ 68Q32
/ Artificial intelligence
/ Covariance
/ distance covariance
/ Eigenfunctions
/ Embeddings
/ Hilbert space
/ Hilbert spaces
/ Hypothesis testing
/ independence testing
/ Machine learning
/ Probabilities
/ Probability distribution
/ Random variables
/ Reproducing kernel Hilbert spaces
/ Statistical analysis
/ Statistical theories
/ Statistical variance
/ Statistics
/ Studies
/ two-sample testing
2013
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Do you wish to request the book?
EQUIVALENCE OF DISTANCE-BASED AND RKHS-BASED STATISTICS IN HYPOTHESIS TESTING
by
Sriperumbudur, Bharath
, Fukumizu, Kenji
, Sejdinovic, Dino
, Gretton, Arthur
in
46E22
/ 62G10
/ 62H20
/ 68Q32
/ Artificial intelligence
/ Covariance
/ distance covariance
/ Eigenfunctions
/ Embeddings
/ Hilbert space
/ Hilbert spaces
/ Hypothesis testing
/ independence testing
/ Machine learning
/ Probabilities
/ Probability distribution
/ Random variables
/ Reproducing kernel Hilbert spaces
/ Statistical analysis
/ Statistical theories
/ Statistical variance
/ Statistics
/ Studies
/ two-sample testing
2013
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EQUIVALENCE OF DISTANCE-BASED AND RKHS-BASED STATISTICS IN HYPOTHESIS TESTING
Journal Article
EQUIVALENCE OF DISTANCE-BASED AND RKHS-BASED STATISTICS IN HYPOTHESIS TESTING
2013
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Overview
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, maximum mean discrepancies (MMD), that is, distances between embeddings of distributions to reproducing kernel Hilbert spaces (RKHS), as established in machine learning. In the case where the energy distance is computed with a semimetric of negative type, a positive definite kernel, termed distance kernel, may be defined such that the MMD corresponds exactly to the energy distance. Conversely, for any positive definite kernel, we can interpret the MMD as energy distance with respect to some negative-type semimetric. This equivalence readily extends to distance covariance using kernels on the product space. We determine the class of probability distributions for which the test statistics are consistent against all alternatives. Finally, we investigate the performance of the family of distance 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.
Publisher
Institute of Mathematical Statistics,The Institute of Mathematical Statistics
Subject
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