Abstract
We present a novel methodology to accurately classify the traffic generated by P2P-TV applications, relying only on the count of packets they exchange with other peers during small time-windows. The rationale is that even a raw count of exchanged packets conveys a wealth of useful information concerning several implementation aspects of a P2P-TV application – such as network discovery and signaling activities, video content distribution and chunk size, etc. By validating our framework, which makes use of Support Vector Machines, on a large set of P2P-TV testbed traces, we show that it is actually possible to reliably discriminate among different applications by simply counting packets.
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Karagiannis, T., Papagiannaki, K., Faloutsos, M.: BLINC: multilevel traffic classification in the dark. ACM Communication Review 35(4) (2005)
Xu, K., Zhang, Z., Bhattacharyya, S.: Profiling internet backbone traffic: behavior models and applications. In: ACM SIGCOMM 2005, Philadelphia, PA, August 2005, pp. 169–180 (2005)
Sen, S., Spatscheck, O., Wang, D.: Accurate, scalable in-network identification of p2p traffic using application signatures. In: WWW 2004, NY (May 2004)
Moore, A.W., Papagiannaki, K.: Toward the Accurate Identification of Network Applications. In: Dovrolis, C. (ed.) PAM 2005. LNCS, vol. 3431, pp. 41–54. Springer, Heidelberg (2005)
Roughan, M., Sen, S., Spatscheck, O., Duffield, N.: Class-of-service mapping for QoS: a statistical signature-based approach to IP traffic classification. In: ACM IMC 2004 (October 2004)
Moore, A.W., Zuev, D.: Internet traffic classification using bayesian analysis techniques. In: ACM SIGMETRICS 2005 (2005)
Bernaille, L., Teixeira, R., Salamatian, K.: Early Application Identification. In: Conference on Future Networking Technologies (CoNEXT 2006), Lisboa, PT (December 2006)
Crotti, M., Dusi, M., Gringoli, F., Salgarelli, L.: Traffic Classification through Simple Statistical Fingerprinting. ACM Computer Communication Review 37(1) (January 2007)
Bonfiglio, D., Mellia, M., Meo, M., Rossi, D., Tofanelli, P.: Revealing Skype Traffic: when Randomness Plays with You. In: ACM SIGCOMM, Kyoto, Japan (August 2007)
Cristianini, N., Shawe-Taylor, J.: An introduction to support Vector Machines and other kernel-based learning methods. Cambridge University Press, New York (1999)
Hei, X., Liang, C., Liang, J., Liu, Y., Ross, K.W.: A Measurement Study of a Large-Scale P2P IPTV System. In: IEEE Transactions on Multimedia (December 2007)
Bhattacharyya, A.: On a measure of divergence between two statistical populations defined by probability distributions. Bull. Calcutta Math. Soc. 35, 99–109 (1943)
NAPA-WINE, http://www.napa-wine.eu
Kulbak, Y., Bickson, D.: The eMule protocol specification. Tech. Rep. Leibniz Center TR-2005-03 (2005)
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Valenti, S., Rossi, D., Meo, M., Mellia, M., Bermolen, P. (2009). Accurate, Fine-Grained Classification of P2P-TV Applications by Simply Counting Packets. In: Papadopouli, M., Owezarski, P., Pras, A. (eds) Traffic Monitoring and Analysis. TMA 2009. Lecture Notes in Computer Science, vol 5537. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-01645-5_10
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DOI: https://doi.org/10.1007/978-3-642-01645-5_10
Publisher Name: Springer, Berlin, Heidelberg
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