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An Empirical Study of Self-Similarity in the Per-User-Connection Arrival Process

机译:每个用户连接到达过程中的自相似性的实证研究

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In this paper, we investigate time-correlation of the connection request process of Web browsing applications and other Internet applications. Evidence of self-similarity in the Internet traffic has been pointed out in several papers, but mainly with reference to the volume of traffic, to the packet arrival process, or to the connection arrival process of aggregated traffic. In our study, instead, we focus on the process of connection requests coming from a single client and study whether asymptotic self-similarity is evident even when there is low client activity, the observation window is short, or data is partial. The analysis is performed on publicly available traffic traces that include both Wide Area and Campus Network traffic. To identify time correlations, we use the novel, unbiased estimator of the power-law exponent based on the Modified Allan Variance (MAVAR). Our results show that self-similarity is evident in Web traffic and Domain Name requests, provided that the client is active for more than a few connections. This study is valuable for researchers interested in the modeling of packet traffic sources or in the monitoring of network activity.
机译:在本文中,我们研究了Web浏览应用程序和其他Internet应用程序的连接请求过程的时间相关性。互联网流量中自相似性的证据已在几篇论文中指出,但主要是针对流量,数据包到达过程或聚合流量的连接到达过程。相反,在我们的研究中,我们专注于来自单个客户端的连接请求的过程,研究即使在客户端活动较少,观察窗口较短或数据不完整的情况下,渐近自相似性是否仍然明显。对包括广域网和校园网流量在内的公共可用流量跟踪进行分析。为了确定时间相关性,我们使用基于修正的艾伦方差(MAVAR)的幂律指数的新颖,无偏估计量。我们的结果表明,只要客户端对多个连接都是活动的,则自相似性在Web流量和域名请求中就很明显。对于对数据包流量源建模或网络活动监视感兴趣的研究人员,此研究非常有价值。

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