在P2P和全球计算平台中集群主机

Abhishek Agrawal, H. Casanova
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引用次数: 36

摘要

能够在Internet客户机中识别附近的主机集群,为许多Internet和p2p应用程序提供了非常有用的信息。这类应用的例子包括web应用、点对点覆盖网络中的请求路由和分布式计算应用。本文提出并提出了internet主机集群问题。利用以前在互联网主机距离测量方面的工作,我们提出了两种分层聚类技术来解决这个问题。第一种技术是基于标记的分层划分方法。第二种技术是基于众所周知的k均值聚类算法。我们在模拟中对这两种方法进行了评估,使用由GT ITM生成器生成的具有代表性的Internet拓扑为1000多台主机进行了模拟。仿真结果表明,我们的聚类算法可以有效地识别任意直径的聚类。我们的结论是,通过利用以前在互联网主机距离估计方面的工作,可以对互联网主机进行集群,以使具有不同需求的各种应用受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering hosts in P2P and global computing platforms
Being able to identify clusters of nearby hosts among Internet clients provides very useful information for a number of internet and p2p applications. Examples of such applications include web applications, request routing in peer-to-peer overlay network, and distributed computing applications. In this paper, we present and formulate the internet host clustering problem. Leveraging previous work on internet host distance measurement, we propose two hierarchical clustering techniques to solve this problem. The first technique is a marker based hierarchical partitioning approach. The second technique is based on the well known K-means clustering algorithm. We evaluated these two approaches in simulation using a representative Internet topology generated with the GT ITM generator for over 1,000 hosts. Our simulation results demonstrate that our algorithmic clustering approaches effectively identify clusters with arbitrary diameters. Our conclusion is that by leveraging previous work on internet host distance estimation, it is possible to cluster Internet hosts to benefit various applications with various requirements.
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