Stein's Method for Mean-Field Approximations in Light and Heavy Traffic Regimes

Lei Ying
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引用次数: 31

Abstract

Mean-field analysis is an analytical method for understanding large-scale stochastic systems such as large-scale data centers and communication networks. The idea is to approximate the stationary distribution of a large-scale stochastic system using the equilibrium point (called the mean-field limit) of a dynamical system (called the mean-field model). This approximation is often justified by proving the weak convergence of stationary distributions to its mean-field limit. Most existing mean-field models concerned the light-traffic regime where the load of the system, denote by ρ, is strictly less than one and is independent of the size of the system. This is because a traditional mean-field model represents the limit of the corresponding stochastic system. Therefore, the load of the mean-field model is ρ=limN-> ∞ ρ(N), where ρ(N) is the load of the stochastic system of size N. Now if ρ(N)-> 1 as N -> ∞ (i.e., in the heavy-traffic regime), then ρ=1. For most systems, the mean-field limits when ρ=1 are trivial and meaningless. To overcome this difficulty of traditional mean-field models, this paper takes a different point of view on mean-field models. Instead of regarding a mean-field model as the limiting system of large-scale stochastic system, it views the equilibrium point of the mean-field model, called a mean-field solution, simply as an approximation of the stationary distribution of the finite-size system. Therefore both mean-field models and solutions can be functions of N. The proposed method focuses on quantifying the approximation error. If the approximation error is small (as we will show in two applications), then we can conclude that the mean-field solution is a good approximation of the stationary distribution.
斯坦因在轻交通和重交通条件下的平均场近似方法
平均场分析是一种用于理解大型随机系统(如大型数据中心和通信网络)的分析方法。其思想是利用动力系统(称为平均场模型)的平衡点(称为平均场极限)来近似大规模随机系统的平稳分布。这种近似通常通过证明平稳分布对其平均场极限的弱收敛来证明。大多数现有的平均场模型关注的是轻交通状态,其中系统的负荷,用ρ表示,严格小于1,并且与系统的大小无关。这是因为传统的平均场模型代表了相应随机系统的极限。因此,平均场模型的负荷为ρ=limN->∞ρ(N),其中ρ(N)为大小为N的随机系统的负荷。现在,如果ρ(N)-> 1为N->∞(即在交通繁忙的情况下),则ρ=1。对于大多数系统,当ρ=1时的平均场极限是平凡的和无意义的。为了克服传统平均场模型的这一困难,本文对平均场模型提出了不同的观点。它不把平均场模型看作是大规模随机系统的极限系统,而是把平均场模型的平衡点(称为平均场解)看作是有限大小系统的平稳分布的近似。因此,平均场模型和解都可以是n的函数。本文提出的方法侧重于量化近似误差。如果近似误差很小(正如我们将在两个应用中展示的那样),那么我们可以得出结论,平均场解是平稳分布的良好近似。
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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