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Adaptive Monte Carlo methods for matrix equations with applications

机译:矩阵方程的自适应蒙特卡罗方法及其应用

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摘要

This paper discusses empirical studies with both the adaptive correlated sequential sampling method and the adaptive importance sampling method which call be used in solving matrix and integral equations. Both methods achieve geometric convergence (provided the number of random walks per stage is large enough) in the sense: e(nu) <= c lambda(nu), where e(nu) is the error at stage nu, lambda is an element of (0, 1) is a constant, c > 0 is also a constant. Thus, both methods converge much faster than the conventional Monte Carlo method. Our extensive numerical test results show that the adaptive importance sampling method converges faster than the adaptive correlated sequential sampling method, even with many fewer random walks per stage for the same problem. The methods call be applied to problems involving large scale matrix equations with non-sparse coefficient matrices. We also provide an application of the adaptive importance sampling method to the numerical solution of integral equations, where the integral equations are converted into matrix equations (with order up to 8192 x 8192) after discretization. By using Niederreiter's sequence, instead of a pseudo-random sequence when generating the nodal point set used in discretizing the phase space Gamma, we find that the average absolute errors or relative errors at nodal points can be reduced by a factor of more than one hundred.
机译:本文采用自适应相关序贯抽样法和自适应重要性抽样法对实证研究进行了讨论,这些方法被用于求解矩阵和积分方程。两种方法都可以实现几何收敛(假设每个阶段的随机游走次数足够大):e(nu)<= c lambda(nu),其中e(nu)是阶段nu的误差,lambda是一个元素(0,1)的常数是常数,c> 0也是常数。因此,这两种方法的收敛速度都比传统的蒙特卡洛方法快得多。我们广泛的数值测试结果表明,即使对于同一问题,每个阶段的随机游走次数更少,自适应重要性采样方法的收敛速度也比自适应相关顺序采样方法快。所称方法适用于涉及具有非稀疏系数矩阵的大型矩阵方程的问题。我们还将自适应重要性采样方法应用于积分方程的数值解,在离散化之后将积分方程转换为矩阵方程(阶数最大为8192 x 8192)。通过使用Niederreiter序列,而不是生成离散化相空间Gamma所用的节点集时的伪随机序列,我们发现节点上的平均绝对误差或相对误差可以减少100倍以上。

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