PingER网络数据的分析与聚类

Anwesha Mal, A. Sabitha, Abhay Bansal, B. White, L. Cottrell
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引用次数: 5

摘要

PingER项目由位于加州斯坦福的SLAC国家加速器实验室启动,目的是监控端到端网络性能。在过去的18年里,PingER产生了大量的数据,这些数据存储在空间分隔的文件中。然而,由于在有效检索数据时面临的困难,有人提出将所有数据都以RDF三元组的形式存储。解释和分析如此大量的数据成为首要问题。通过使用聚类算法,可以在数据集中观察到新的有趣的模式。可以执行离群值分析,以深入了解数据集中发生的异常,并分析此类异常的可能原因。可以根据数据所属的国家观察到模式,并可以对不同国家之间的模式进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and clustering of PingER network data
The PingER project was started by the SLAC National Accelerator Laboratory, Stanford, California for the purpose of monitoring end to end network performance. For the last eighteen years PingER has generated an enormous amount of data that has been stored in space separated files. However due to the difficulties faced in retrieving data efficiently, it has been proposed that all the data be put into the form of RDF triples. Interpreting and analyzing such large volumes of data becomes a primary concern. By making using of clustering algorithms new and interesting patterns can be observed in the data sets. Outlier analysis can be performed giving insight to the exceptions occurring in the dataset and analyzing the probable causes of such. Patterns could be observed based on the country to which the data belongs and comparisons can be drawn between the patterns between the different countries.
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