4.5 Article

Large-scale kernel methods for independence testing

期刊

STATISTICS AND COMPUTING
卷 28, 期 1, 页码 113-130

出版社

SPRINGER
DOI: 10.1007/s11222-016-9721-7

关键词

Independence testing; Large-scale kernel method; Hilbert-Schmidt independence criteria; Random Fourier features; Nystrom method

资金

  1. EPSRC [EP/M50659X/1]
  2. ERC [FP7/617071]
  3. Engineering and Physical Sciences Research Council [1656911] Funding Source: researchfish
  4. Alan Turing Institute [TU/B/000054] Funding Source: researchfish

向作者/读者索取更多资源

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, these approaches come with an at least quadratic computational cost in the number of observations, which can be prohibitive in many applications. Arguably, it is exactly in such large-scale datasets that capturing any type of dependence is of interest, so striking a favourable trade-off between computational efficiency and test performance for kernel independence tests would have a direct impact on their applicability in practice. In this contribution, we provide an extensive study of the use of large-scale kernel approximations in the context of independence testing, contrasting block-based, Nystrom and random Fourier feature approaches. Through a variety of synthetic data experiments, it is demonstrated that our large-scale methods give comparable performance with existing methods while using significantly less computation time and memory.

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