Exact Asymptotics for a Multitimescale Model with Applications in Modeling Overdispersed Customer Streams

Q1 Mathematics
M. Heemskerk, M. Mandjes
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引用次数: 1

Abstract

In this paper we study the probability $\xi_n(u):={\mathbb P}\left(C_n\geqslant u n \right)$, with $C_n:=A(\psi_n B(\varphi_n))$ for Levy processes $A(\cdot)$ and $B(\cdot)$, and $\varphi_n$ and $\psi_n$ non-negative sequences such that $\varphi_n \psi_n =n$ and $\varphi_n\to\infty$ as $n\to\infty$. Two timescale regimes are distinguished: a `fast' regime in which $\varphi_n$ is superlinear and a `slow' regime in which $\varphi_n$ is sublinear. We provide the exact asymptotics of $\xi_n(u)$ (as $n\to\infty$) for both regimes, relying on change-of-measure arguments in combination with Edgeworth-type estimates. The asymptotics have an unconventional form: the exponent contains the commonly observed linear term, but may also contain sublinear terms (the number of which depends on the precise form of $\varphi_n$ and $\psi_n$). To showcase the power of our results we include two examples, covering both the case where $C_n$ is lattice and non-lattice. Finally we present numerical experiments that demonstrate the importance of taking into account the doubly stochastic nature of $C_n$ in a practical application related to customer streams in service systems; they show that the asymptotic results obtained yield highly accurate approximations, also in scenarios in which there is no pronounced timescale separation.
多时间尺度模型的精确渐近性及其在过度分散客户流建模中的应用
在本文中,我们研究Levy过程$A(\cdot)$和$B(\cdot)$的概率$\xi_n(u):={\mathbb P}\left(C_n\geqslant u n\right)$,其中$C_n:=A(\pis_n B(\varphi_n))$,以及$\varphi-n$和$\psi_n$非负序列,使得$\varphi_n\pis_n=n$和$\ varphi_n\to\infty$为$n\\to\infty$。区分了两种时间尺度机制:$\varphi_n$是超线性的“快”机制和$\varphi_n$是次线性的“慢”机制。我们提供了两种制度的$\xi_n(u)$(作为$n\to\infty$)的精确无症状性,依赖于测量变化参数和Edgeworth-型估计。渐近线具有非常规形式:指数包含常见的线性项,但也可能包含次线性项(次线性项的数量取决于$\varphi_n$和$\psi_n$的精确形式)。为了展示我们的结果的威力,我们包括了两个例子,涵盖了$C_n$是格和非格的情况。最后,我们给出了数值实验,证明了在服务系统中与客户流相关的实际应用中考虑$C_n$的双重随机性的重要性;他们表明,在没有明显的时间尺度分离的情况下,所获得的渐近结果产生了高度精确的近似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Stochastic Systems
Stochastic Systems Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
3.70
自引率
0.00%
发文量
18
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