Application of data mining for the analysis of Internet path performance

L. Borzemski, Lukasz Lubczynski, Ziemowit Nowak
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引用次数: 6

Abstract

We apply data mining analysis to study Internet path performance. We show how a data mining system can be used by end-users in this application. The traceroute packet probing technique is used for Internet measurements. The data set is mined using neural clustering and tree classification mining functions available in IBM Intelligent Miner. We discover from the measured data sets how the round-trip times of the packets and the number of hops they pass vary with the day of the week and the time of the measurement. The decision tree model shows good accuracy of 97% and may be useful to predict Internet path performance.
数据挖掘在互联网路径性能分析中的应用
我们应用数据挖掘分析来研究互联网路径性能。我们将在此应用程序中展示最终用户如何使用数据挖掘系统。traceroute包探测技术用于互联网测量。数据集的挖掘使用IBM Intelligent Miner中提供的神经聚类和树分类挖掘功能。我们从测量的数据集中发现,数据包的往返时间和它们经过的跳数是如何随着一周中的哪一天和测量的时间而变化的。决策树模型的准确率达到97%,可用于预测互联网路径性能。
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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