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首页> 外文期刊>SIAM Journal on Scientific Computing >INEXACT UNIFORMIZATION METHOD FOR COMPUTING TRANSIENT DISTRIBUTIONS OF MARKOV CHAINS
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INEXACT UNIFORMIZATION METHOD FOR COMPUTING TRANSIENT DISTRIBUTIONS OF MARKOV CHAINS

机译:马氏链瞬态分布的不精确统一化方法

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摘要

The uniformization method (also known as randomization) is a numerically stable algorithm for computing transient distributions of a continuous time Markov chain. When the solution is needed after a long run or when the convergence is slow, the uniformization method involves a large number of matrix-vector products. Despite this, the method remains very popular due to its ease of implementation and its reliability in many practical circumstances. Because calculating the matrix-vector product is the most time-consuming part of the method, overall efficiency in solving large-scale problems can be significantly enhanced if the matrix-vector product is made more economical. In this paper, we incorporate a new relaxation strategy into the uniformization method to compute the matrix-vector products only approximately. We analyze the error introduced by these inexact matrix-vector products and discuss strategies for refining the accuracy of the relaxation while reducing the execution cost. Numerical experiments drawn from computer systems and biological systems are given to show that significant computational savings are achieved in practical applications.
机译:均匀化方法(也称为随机化)是一种数值稳定的算法,用于计算连续时间马尔可夫链的瞬态分布。当长期需要解决方案或收敛速度较慢时,均匀化方法涉及大量的矩阵向量乘积。尽管如此,由于该方法易于实施并且在许多实际情况下具有可靠性,因此该方法仍然非常受欢迎。由于计算矩阵向量乘积是该方法中最耗时的部分,因此,如果使矩阵向量乘积更经济,则可以大大提高解决大规模问题的总体效率。在本文中,我们将一种新的松弛策略合并到均匀化方法中,以仅近似计算矩阵向量乘积。我们分析了这些不精确的矩阵向量乘积所引入的误差,并讨论了在降低执行成本的同时提高松弛精度的策略。从计算机系统和生物系统得出的数值实验表明,在实际应用中可以节省大量计算量。

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