Abstract

We study approximate integration of a function f f over [ 0 , 1 ] s [0,1]^s based on taking the median of 2 r − 1 2r-1 integral estimates derived from independently randomized ( t , m , s ) (t,m,s) -nets in base 2 2 . The nets are randomized by Matousek’s random linear scramble with a random digital shift. If f f is analytic over [ 0 , 1 ] s [0,1]^s , then the probability that any one randomized net’s estimate has an error larger than 2 − c m 2 / s 2^{-cm^2/s} times a quantity depending on f f is O ( 1 / m ) O(1/\sqrt {m}) for any c > 3 log ⁡ ( 2 ) / π 2 ≈ 0.21 c>3\log (2)/\pi ^2\approx 0.21 . As a result, the median of the distribution of these scrambled nets has an error that is O ( n − c log ⁡ ( n ) / s ) O(n^{-c\log (n)/s}) for n = 2 m n=2^m function evaluations. The sample median of 2 r − 1 2r-1 independent draws attains this rate too, so long as r / m 2 r/m^2 is bounded away from zero as m → ∞ m\to \infty . We include results for finite precision estimates and some nonasymptotic comparisons to taking the mean of 2 r − 1 2r-1 independent draws.

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