Factor analysis of network flow throughput measurements for inferring congestion sharing

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Abstract

Internet traffic primarily consists of packets from Transmission Control Protocol (TCP) flows. Based on passive, flow level TCP network measurements, our previous work has focused on using the principal component method to perform factor analysis on flow class throughput correlation matrices in order to infer which classes of TCP flows are sharing bottlenecks in the network. In this paper, we present a firstorder autoregressive model for congestion at a bottleneck to analyze the need for filtering out a subset of the collected flow measurements before analysis. We demonstrate the successful application of our statistical methods in inferring congestion sharing after filtering out small- and large-sized flow samples.

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13th European Signal Processing Conference, EUSIPCO 2005 --

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Auto regressive models, Correlation matrix, First-order, Flow level, Internet traffic, Network flows, On flow, Principal Components, TCP flows, TCP networks, Throughput measurements, Data flow analysis, Factor analysis, Multivariant analysis, Principal component analysis, Signal processing, Traffic congestion, Transmission control protocol

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