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dc.contributor.authorChoi, Baek-Youngeng
dc.contributor.authorZhang, Zhi-Lieng
dc.date.issued2007-02eng
dc.description.abstractTraffic measurement and monitoring are an important component of network management and traffic engineering. With high-speed Internet backbone links, efficient and effective packet sampling techniques for traffic measurement and monitoring are not only desirable, but also increasingly becoming a necessity. Since the utility of sampling depends on the accuracy and economy of measurement, it is important to control sampling error. In this paper, we propose an adaptive packet sampling technique for flow-level traffic measurement with stratification approach. We employ and advance sampling theory in order to ensure the accurate estimation of large flows. With real network traces, we demonstrate that the proposed sampling technique provides unbiased estimation of flow size with controllable error bound, in terms of both packet and byte counts for elephant flows, while avoiding excessive oversampling.eng
dc.format.extent16 pageseng
dc.identifier.citationBaek-Young Choi, & Zhi-Li Zhang. (2007). Adaptive random sampling for traffic volume measurement. Telecommunication Systems, 34(1-2), 71-80. URL: http://www.springerlink.com/content/u64p708277q8741j/?MUD=MPeng
dc.identifier.urihttp://hdl.handle.net/10355/8173eng
dc.publisherSpringer Scienceeng
dc.relation.uriDOI: 10.1007/s11235-006-9023-zeng
dc.subjectTraffic Measurementeng
dc.subjectPacket Samplingeng
dc.subject.lcshComputer networks -- Monitoringeng
dc.subject.lcshFloweng
dc.titleAdaptive Random Sampling for Traffic Volume Measurementeng
dc.typeArticleeng
dc.typePreprinteng


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