使用基于字符串的状态压缩加速异步系统的马尔可夫分析

A. Xie, P. Beerel
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引用次数: 6

摘要

本文提出了一种加速异步系统大型马尔可夫链平稳分析的方法。与其直接处理原始的马尔可夫链,我们建议分析通过一种称为基于字符串的状态压缩的新技术获得的较小的马尔可夫链。一旦解出较小的链,就可以通过称为展开的过程得到原始链的解。当马尔可夫链具有较小的反馈顶点集时,这种方法尤其强大,这种情况经常发生在异步系统中。实验结果表明,该方法可以在运行时间内产生超过一个数量级的减少,并且比传统技术更容易分析更大的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Markovian analysis of asynchronous systems using string-based state compression
This paper presents a methodology to speed up the stationary analysis of large Markov chains that model asynchronous systems. Instead of directly working on the original Markov chain, we propose to analyze a smaller Markov chain obtained via a novel technique called string-based state compression. Once the smaller chain is solved, the solution to the original chain is obtained via a process called expansion. The method is especially powerful when the Markov chain has a small feedback vertex set, which happens often an asynchronous systems. Experimental results show that the method can yield reductions of more than an order of magnitude in run time and facilitate the analysis of larger systems than possible using traditional techniques.
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