On Integration Methods Based on Scrambled Nets of Arbitrary Size

We consider the problem of evaluating for a function . In situations where can be approximated by an estimate of the form , with a point set in , it is now well known that the Monte Carlo convergence rate can be improved by taking for the first points, , of a scrambled -sequence in base . In this paper we derive a bound for the variance of scrambled net quadrature rules which is of order without any restriction on . As a corollary, this bound allows us to provide simple conditions to get, for any pattern of , an integration error of size for functions that depend on the quadrature size . Notably, we establish that sequential quasi-Monte Carlo (M. Gerber and N. Chopin, 2015, \emph{J. R. Statist. Soc. B, to appear.}) reaches the convergence rate for any values of . In a numerical study, we show that for scrambled net quadrature rules we can relax the constraint on without any loss of efficiency when the integrand is a discontinuous function while, for sequential quasi-Monte Carlo, taking may only provide moderate gains.
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