Discovering Web Workload Characteristics through Cluster Analysis

Fengbin Li, K. Goseva-Popstojanova, A. Ross
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引用次数: 15

Abstract

In this paper we present clustering analysis of session-based Web workloads of eight Web servers using the intrasession characteristics (i.e., number of requests per session, session length in time, and bytes transferred per session) as variables. We use K-means algorithm and the Mahalanobis distance, and analyze the heavy-tailed behavior of intra-session characteristics and their correlations for each cluster. Our results show that clustering provides an efficient way to classify tens or hundreds thousands of sessions into several coherent classes that efficiently describe Web workloads. These classes reveal phenomena that cannot be observed when studying the workload as a whole.
通过聚类分析发现Web工作负载特征
在本文中,我们使用会话内特征(即每个会话的请求数、会话时间长度和每个会话传输的字节)作为变量,对八台Web服务器的基于会话的Web工作负载进行了聚类分析。我们使用K-means算法和Mahalanobis距离,分析了每个聚类的会话内特征的重尾行为及其相关性。我们的结果表明,集群提供了一种有效的方法,将数万或数十万个会话分类为几个连贯的类,这些类有效地描述了Web工作负载。这些类揭示了在整体研究工作负载时无法观察到的现象。
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