Kernel Thinning
We introduce kernel thinning, a new procedure for compressing a distribution more effectively than i.i.d.\ sampling or standard thinning. Given a suitable reproducing kernel and time, kernel thinning compresses an -point approximation to into a -point approximation with comparable worst-case integration error across the associated reproducing kernel Hilbert space. With high probability, the maximum discrepancy in integration error is for compactly supported and for sub-exponential on . In contrast, an equal-sized i.i.d.\ sample from suffers integration error. Our sub-exponential guarantees resemble the classical quasi-Monte Carlo error rates for uniform on but apply to general distributions on and a wide range of common kernels. We use our results to derive explicit non-asymptotic maximum mean discrepancy bounds for Gaussian, Mat\'ern, and B-spline kernels and present two vignettes illustrating the practical benefits of kernel thinning over i.i.d.\ sampling and standard Markov chain Monte Carlo thinning, in dimensions through .
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