具有实特征值的集中矩阵指数分布

IF 0.7 3区 工程技术 Q4 ENGINEERING, INDUSTRIAL
A. Mészáros, M. Telek
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引用次数: 1

摘要

在随机模型中,集中随机变量经常用于表示确定性延迟。阶$N$最集中的相型分布的平方变异系数($\ mathm {SCV}$)为$1/N$。为了进一步简化$\ mathm {SCV}$,最近研究了具有复特征值的集中矩阵指数分布。得到了一阶$N$ CME分布的$\ mathm {SCV}$对于奇数$N=2n+1$阶可小于$N ^{-2.1}$,且表现出如此低的$\ mathm {SCV}$的矩阵指数分布具有复特征值。本文考虑具有实特征值的CME分布。对于给定阶数$n$,我们给出了识别具有最小SCV的CME-R分布的有效数值方法。我们的研究表明,最集中的阶为$N=2n+1$的CME-R的$\ mathm {SCV}$小于$N ^{-1.85}$。我们还讨论了如何将CME-R用于数值拉普拉斯逆变换,当拉普拉斯变换函数在复数点上无法求值时,这是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concentrated matrix exponential distributions with real eigenvalues
Abstract Concentrated random variables are frequently used in representing deterministic delays in stochastic models. The squared coefficient of variation ($\mathrm {SCV}$) of the most concentrated phase-type distribution of order $N$ is $1/N$. To further reduce the $\mathrm {SCV}$, concentrated matrix exponential (CME) distributions with complex eigenvalues were investigated recently. It was obtained that the $\mathrm {SCV}$ of an order $N$ CME distribution can be less than $n^{-2.1}$ for odd $N=2n+1$ orders, and the matrix exponential distribution, which exhibits such a low $\mathrm {SCV}$ has complex eigenvalues. In this paper, we consider CME distributions with real eigenvalues (CME-R). We present efficient numerical methods for identifying a CME-R distribution with smallest SCV for a given order $n$. Our investigations show that the $\mathrm {SCV}$ of the most concentrated CME-R of order $N=2n+1$ is less than $n^{-1.85}$. We also discuss how CME-R can be used for numerical inverse Laplace transformation, which is beneficial when the Laplace transform function is impossible to evaluate at complex points.
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来源期刊
CiteScore
2.20
自引率
18.20%
发文量
45
审稿时长
>12 weeks
期刊介绍: The primary focus of the journal is on stochastic modelling in the physical and engineering sciences, with particular emphasis on queueing theory, reliability theory, inventory theory, simulation, mathematical finance and probabilistic networks and graphs. Papers on analytic properties and related disciplines are also considered, as well as more general papers on applied and computational probability, if appropriate. Readers include academics working in statistics, operations research, computer science, engineering, management science and physical sciences as well as industrial practitioners engaged in telecommunications, computer science, financial engineering, operations research and management science.
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