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MMD-FUSE: Learning and Combining Kernels for Two-Sample Testing Without Data Splitting

Machine Learning 2023-10-31 v2 Machine Learning Statistics Theory Methodology Statistics Theory

Abstract

We propose novel statistics which maximise the power of a two-sample test based on the Maximum Mean Discrepancy (MMD), by adapting over the set of kernels used in defining it. For finite sets, this reduces to combining (normalised) MMD values under each of these kernels via a weighted soft maximum. Exponential concentration bounds are proved for our proposed statistics under the null and alternative. We further show how these kernels can be chosen in a data-dependent but permutation-independent way, in a well-calibrated test, avoiding data splitting. This technique applies more broadly to general permutation-based MMD testing, and includes the use of deep kernels with features learnt using unsupervised models such as auto-encoders. We highlight the applicability of our MMD-FUSE test on both synthetic low-dimensional and real-world high-dimensional data, and compare its performance in terms of power against current state-of-the-art kernel tests.

Keywords

Cite

@article{arxiv.2306.08777,
  title  = {MMD-FUSE: Learning and Combining Kernels for Two-Sample Testing Without Data Splitting},
  author = {Felix Biggs and Antonin Schrab and Arthur Gretton},
  journal= {arXiv preprint arXiv:2306.08777},
  year   = {2023}
}

Comments

38 pages,8 figures, 1 table

R2 v1 2026-06-28T11:05:27.158Z