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A memory-based learning approach to reduce false alarms in intrusion detection

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5 Author(s)
Ill-Young Weon ; Dept. of Comput. Eng., Kon-Kuk Univ., Seoul ; Doo Heon Song ; Chang-Hoon Lee ; Young-Jun Heo
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Signature-based IDS is known to have acceptable accuracy but suffers from high rates of false alarms. We show a behavior based alarm reduction by using a memory-based machine learning technique - instance based learner. Our extended form of IBL (XIBL) examines SNORT alarm signals if that signal is worthy sending signals to security manager. A preliminary experiment shows that these exists an apparent difference between true alarms and false alarms with respect to XIBL behavior and the full experiment successfully exhibits the power of hybrid system is there is a rich set of analyzed data such as DARPA 1998 data set we used

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Advanced Communication Technology, 2005, ICACT 2005. The 7th International Conference on  (Volume:1 )

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