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Eighth International Conference on Parallel and Distributed Computing, Applications and Technologies (PDCAT 2007)
Optimizing IP Flow Classification Using Feature Selection
Adelaide, Australia
December 03-December 06
ISBN: 0-7695-3049-4
The identification of network applications is essential to numerous network activities. Unfortunately, traditional port-based classification and packet payload-based analysis exhibit a number of shortfalls. An alternative is to use Machine Learning (ML) techniques and identify network applications based on per-flow features. Since a lot of flow features can be used for flow classification and there are many irrelevant and redundant features among them, feature selection plays a vital role in performance optimizing. In this paper, we propose a wrapper-based feature selection method for IP flow classification using modified random-mutation hill-climbing (RMHC) and C4.5 algorithm (MRMHC-C4.5). The experiments show our approach can greatly improve computational performance without negative impact on classification accuracy. Keywords: Flow Classification, C4.5, Feature Selection
Citation:
Dai Lei, Chen You, Yun Xiaochun, "Optimizing IP Flow Classification Using Feature Selection," pdcat, pp.39-45, Eighth International Conference on Parallel and Distributed Computing, Applications and Technologies (PDCAT 2007), 2007
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