基于随机矩阵理论的互联网流量时空效应监测

Jia Liu, Wenzhu Zhang, Jian Yuan, Depeng Jin, Lieguang Zeng
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引用次数: 3

摘要

流量模式监控一直是提高计算机网络性能的重要手段。近年来,P2P (peer-to-peer)服务逐渐取代Web等传统的客户端-服务器(client-server, C-S)服务主导了互联网流量。网络的变化情况主要表现在两个方面。一是流行的P2P文件共享应用需要板的上下行带宽,这与C-S面向服务网络的不对称结构相冲突;二是P2P覆盖网络的拓扑结构随着对等体的加入和离开而变化。互联网流量的急剧变化可能会导致与早年观察到的不同的模式。这导致了新一轮的互联网测量,这需要在ISP或自治系统的区域内对全网流量进行有效的监控。不幸的是,很少有技术能够在宏观层面上很好地捕捉到C-S和P2P流量的动态。本文提出了一种基于随机矩阵理论(RMT)的网络流量模式检测方法。该方法仅使用少量的观测点,就能对互联网流量的宏观影响进行监测。我们表明,这种宏观层面的监测可以用来捕捉P2P和C-S流量引起的时空模式变化,并告知P2P和C-S流量可能在何时何地出现在交通网络中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring the spatial-temporal effect of internet traffic based on Random Matrix Theory
Monitoring traffic pattern is always an important approach to improve the performance of computer networks. In recent years, peer-to-peer (P2P) service gradually dominates the Internet traffic against traditional client-server (C-S) service such as Web. The changed situation of networks is mainly in two aspects. One is that popular P2P file-sharing applications require both board downstream and upstream bandwidth, which conflicts to asymmetry structure of the C-S service oriented networks, and another is that the topology of P2P overlay networks is varying with peers joining and leaving. The dramatic shift of Internet traffic may cause different patterns from that observed in early years. This leads a new round of Internet measurement, which requires effective monitoring of network-wide traffic within the region of ISP or autonomous system. Unfortunately, few of technologies can capture well the dynamics of C-S and P2P traffic in a macroscopic level. In this paper, we propose a method based on random matrix theory (RMT) for the detection of networkwide traffic pattern. Using only a few observation points, our method can monitor the macroscopic effect of the Internet traffic. We show that such macroscopic-level monitoring can be used to capture shifts in spatial-temporal patterns caused by P2P and C-S traffic, and inform where and when P2P and C-S traffic possibly arise in transit networks.
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