articleACM SIGCOMM Computer Communication ReviewOct 10, 2006Closed access

A preliminary performance comparison of five machine learning algorithms for practical IP traffic flow classification

Swinburne University of Technology

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Abstract

The identification of network applications through observation of associated packet traffic flows is vital to the areas of network management and surveillance. Currently popular methods such as port number and payload-based identification exhibit a number of shortfalls. An alternative is to use machine learning (ML) techniques and identify network applications based on per-flow statistics, derived from payload-independent features such as packet length and inter-arrival time distributions. The performance impact of feature set reduction, using Consistency-based and Correlation-based feature selection, is demonstrated on Naïve Bayes, C4.5, Bayesian Network and Naïve Bayes Tree algorithms. We then show that it…

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Authors

3

Topics & keywords

Keywords
  • Computer science
  • Payload (computing)
  • Naive Bayes classifier
  • Bayesian network
  • Algorithm
  • Traffic classification
  • Machine learning
  • Identification (biology)
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