Intrusion Detection : Support Vector Machines and Neural Networks

@inproceedings{Mukkamala2002IntrusionD,
  title={Intrusion Detection : Support Vector Machines and Neural Networks},
  author={Srinivas Mukkamala and Guadalupe I. Janoski and Andrew H. Sung},
  year={2002}
}
This paper concerns intrusion detection and audit trail reduction. We describe approaches to intrusion detection and audit data reduction using support vector machines and neural networks. Using a set of benchmark data from the KDD (Knowledge Discovery and Data Mining) competition designed by DARPA, we demonstrate that efficient and highly accurate classifiers can be built using either support vector machines (SVMs) or neural networks for intrusion detection. Further, we present SVMs and neural… CONTINUE READING

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