AbstractHybrids of equidistribution and Monte Carlo methods of integration can achieve the superior accuracy of the former while allowing the simple error estimation methods of the latter. In particular, randomized (0,m,s)-nets in basebproduce unbiased estimates of the integral, have a variance that tends to zero faster than 1/nfor any square integrable integrand and have a variance that for finitenis never more thane≐2.718 times as large as the Monte Carlo variance. Lower bounds thaneare known for special cases. Some very important (t,m,s)-nets havet>0. The widely used Sobol' sequences are of this form, as are some recent and very promising nets due to Niederreiter and Xing. Much less is known about randomized versions of these nets, espec...
We prove that a class of Monte Carlo methods, including averages based on randomized digital nets, L...
International audienceWe analyze a Monte Carlo method using stratified sampling for approximate inte...
Abstract. Quasi-Monte Carlo methods are based on the idea that ran-dom Monte Carlo techniques can of...
AbstractHybrids of equidistribution and Monte Carlo methods of integration can achieve the superior ...
This article studies the variance of quadrature over a scrambled union of two nets, ( 0 ; 0; m; s)-n...
We study numerical approximations of integrals [0,1]s f(x) dx by averaging the func-tion at some sam...
AbstractUntil now (t,m,s)-nets in base b are the most important representatives in the family of low...
The variance of randomly shifted lattice rules for numerical multiple integration can be expressed b...
We prove upper and lower error bounds for error of the randomized Smolyak algorithm and provide a th...
A lattice rule with a randomly-shifted lattice estimates a mathematical expectation, written as an i...
The standard Monte Carlo approach to evaluating multi-dimensional integrals using (pseudo)-random in...
A lattice rule with a randomly-shifted lattice estimates a mathematical expectation, written as an i...
A lattice rule with a randomly-shifted lattice estimates a mathematical expectation, written as an i...
The variance of randomly shifted lattice rules for numerical multiple integration can be expressed b...
MCQMC2010Quasi-Monte Carlo methods can be used to approximate integrals in various weighted spaces o...
We prove that a class of Monte Carlo methods, including averages based on randomized digital nets, L...
International audienceWe analyze a Monte Carlo method using stratified sampling for approximate inte...
Abstract. Quasi-Monte Carlo methods are based on the idea that ran-dom Monte Carlo techniques can of...
AbstractHybrids of equidistribution and Monte Carlo methods of integration can achieve the superior ...
This article studies the variance of quadrature over a scrambled union of two nets, ( 0 ; 0; m; s)-n...
We study numerical approximations of integrals [0,1]s f(x) dx by averaging the func-tion at some sam...
AbstractUntil now (t,m,s)-nets in base b are the most important representatives in the family of low...
The variance of randomly shifted lattice rules for numerical multiple integration can be expressed b...
We prove upper and lower error bounds for error of the randomized Smolyak algorithm and provide a th...
A lattice rule with a randomly-shifted lattice estimates a mathematical expectation, written as an i...
The standard Monte Carlo approach to evaluating multi-dimensional integrals using (pseudo)-random in...
A lattice rule with a randomly-shifted lattice estimates a mathematical expectation, written as an i...
A lattice rule with a randomly-shifted lattice estimates a mathematical expectation, written as an i...
The variance of randomly shifted lattice rules for numerical multiple integration can be expressed b...
MCQMC2010Quasi-Monte Carlo methods can be used to approximate integrals in various weighted spaces o...
We prove that a class of Monte Carlo methods, including averages based on randomized digital nets, L...
International audienceWe analyze a Monte Carlo method using stratified sampling for approximate inte...
Abstract. Quasi-Monte Carlo methods are based on the idea that ran-dom Monte Carlo techniques can of...