Quasi-Monte Carlo Methods for some Linear Algebra Problems. Convergence and Complexity
Data(s) |
08/06/2011
08/06/2011
2010
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Resumo |
We present quasi-Monte Carlo analogs of Monte Carlo methods for some linear algebra problems: solving systems of linear equations, computing extreme eigenvalues, and matrix inversion. Reformulating the problems as solving integral equations with a special kernels and domains permits us to analyze the quasi-Monte Carlo methods with bounds from numerical integration. Standard Monte Carlo methods for integration provide a convergence rate of O(N^(−1/2)) using N samples. Quasi-Monte Carlo methods use quasirandom sequences with the resulting convergence rate for numerical integration as good as O((logN)^k)N^(−1)). We have shown theoretically and through numerical tests that the use of quasirandom sequences improves both the magnitude of the error and the convergence rate of the considered Monte Carlo methods. We also analyze the complexity of considered quasi-Monte Carlo algorithms and compare them to the complexity of the analogous Monte Carlo and deterministic algorithms. * This work is supported by the National Science Fund of Bulgaria under Grant No. D002-146/16.12.2008. |
Identificador |
Serdica Journal of Computing, Vol. 4, No 1, (2010), 57p-72p 1312-6555 |
Idioma(s) |
en |
Publicador |
Institute of Mathematics and Informatics Bulgarian Academy of Sciences |
Palavras-Chave | #Quasi-Monte Carlo Methods #Matrix Computations #Markov Chains #Quasirandom Sequences |
Tipo |
Article |