The intrusion detection system architecture commonly used in commercial and research systems have a number of problems that limit their configurability, scalability or efficiency. In this paper, two machine-learning paradigms, artificial neural networks and fuzzy inference system, are used to design an intrusion detection system. SNORT is used to perform real time traffic analysis and packet logging on IP network during the training phase of the system. Then a signature pattern database is constructed using protocol analysis and neuro-fuzzy learning method. Using 1998 DARPA Intrusion Detection Evaluation Data and TCP dump raw data, the experiments are deployed and discussed.
Jitender SharmaSonia SoniaKaran KumarPankaj JainRaed H. C. AlfilhHussein Alkattan
Jitender SharmaSonia SoniaKaran KumarZakaria BoulouardAdedapo Paul AderemiCelestine Iwendi
Zahra Atashbar OrangEzzat MoradpourAhmad Habibizad NavinAmir Azimi Alasti AhrabimMir Kamal Mirnia
Larbi EsmahiKristian WilliamsonElarbi Badidi