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Distributed and Scalable Intrusion Detection System Based on Agents and Intelligent Techniques
Author(s) -
Aly M. El-Semary,
Mostafa G. M. Mostafa
Publication year - 2010
Publication title -
journal of information processing systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.288
H-Index - 23
eISSN - 2092-805X
pISSN - 1976-913X
DOI - 10.3745/jips.2010.6.4.481
Subject(s) - computer science , intrusion detection system , scalability , anomaly detection , network packet , data mining , the internet , anomaly based intrusion detection system , sliding window protocol , network security , architecture , mode (computer interface) , real time computing , window (computing) , computer network , operating system , art , visual arts
The Internet explosion and the increase in crucial web applications such as e- banking and e-commerce, make essential the need for network security tools. One of such tools is an Intrusion detection system which can be classified based on detection approachs as being signature-based or anomaly-based. Even though intrusion detection systems are well defined, their cooperation with each other to detect attacks needs to be addressed. Consequently, a new architecture that allows them to cooperate in detecting attacks is proposed. The architecture uses Software Agents to provide scalability and distributability. It works in two modes: learning and detection. During learning mode, it generates a profile for each individual system using a fuzzy data mining algorithm. During detection mode, each system uses the FuzzyJess to match network traffic against its profile. The architecture was tested against a standard data set produced by MIT's Lincoln Laboratory and the primary results show its efficiency and capability to detect attacks. Finally, two new methods, the memory-window and memoryless-window, were developed for extracting useful parameters from raw packets. The parameters are used as detection metrics.

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