Optimization of Randomized Monte Carlo Algorithms for Solving Problems with Random Parameters


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Abstract

Randomized Monte Carlo algorithms intended for statistical kernel estimation of the averaged solution to a problem with random baseline parameters are optimized. For this purpose, a criterion for the complexity of a functional Monte Carlo estimate is formulated. The algorithms involve a splitting method in which, for each realization of the parameters, a certain number of trajectories of the corresponding baseline process are constructed.

About the authors

G. A. Mikhailov

Institute of Computational Mathematics and Mathematical Geophysics, Siberian Branch; Novosibirsk State University

Author for correspondence.
Email: gam@sscc.ru
Russian Federation, Novosibirsk, 630090; Novosibirsk, 630090

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