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Mat. Model., 2017 Volume 29, Number 2, Pages 135–138 (Mi mm3821)

On numerical methods for functions depending on a very large number of variables

I. M. Sobol

Keldysh Institute of Applied Mathematics of RAS

Abstract: The question under discussion is why do optimal algorithms on classes of functions sometimes become useless in practice. As an example let's consider the class of functions which satisfy a general Lipschitz condition. The methods of integral evaluation over a unit cube of $d$ dimensions, where $d$ is significantly large, are discussed. It is assumed that the integrand is square integrable. A crude Monte Carlo estimation can be used. In that case the probable error of estimation is proportional $1/\sqrt{N}$, where $N$ is the number of values of the integrand. If we use a quasi-Monte Carlo method instead of Monte Carlo one, then the error does not depend on the dimension $d$, numerous examples show that it depends on the average dimension $\hat{d}$ of the integrand. For small $\hat{d}$ the order of the error is close to $1/N$.

Keywords: optimal algorithm, Lipschitz condition, Monte Carlo method, quasi-Monte Carlo method, the average dimension.

Received: 14.11.2016


 English version:
Mathematical Models and Computer Simulations, 2017, 9:5, 598–600

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© Steklov Math. Inst. of RAS, 2025