Monte Carlo integration of non-differentiable functions on , , using a single determinantal point pattern defined on

This paper concerns the use of a particular class of determinantal point processes (DPP), a class of repulsive spatial point processes, for Monte Carlo integration. Let , with . Using a single set of quadrature points defined, once for all, in dimension from the realization of the DPP model, we investigate "minimal" assumptions on the integrand in order to obtain unbiased Monte Carlo estimates of for any known -dimensional integrable function on . In particular, we show that the resulting estimator has variance with order when the integrand belongs to some Sobolev space with regularity . When (which includes a large class of non-differentiable functions), the variance is asymptotically explicit and the estimator is shown to satisfy a Central Limit Theorem.
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