Large-scale kernel methods for independence testing
Representations of probability measures in reproducing kernel Hilbert spaces provide a flexible framework for fully nonparametric hypothesis tests of independence, which can capture any type of departure from independence, including nonlinear associations and multivariate interactions. However, thes...
Main Authors: | Zhang, Q, Filippi, S, Gretton, A, Sejdinovic, D |
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Format: | Journal article |
Published: |
Springer US
2017
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