Title of article :
INTRUSION DETECTION USING A MIXED FEATURES FUZZY CLUSTERING ALGORITHM
Author/Authors :
Hameed, Sarab M. University of Baghdad - College of Science - Department of Computer Science, Iraq , Sulaiman, Sumaia Saad University of Baghdad - College of Science - Department of Computer Science, Iraq
Abstract :
Proliferation of network systems and growing usage of Internet make network security issue to be more important. Intrusion detection is an important factor in keeping network secure. The main aim of intrusion detection is to classify behavior of a system into normal and intrusive behaviors. However, the normal and the attack behaviors in networks are hard to predict as the boundaries between them cannot be well distinct. This paper presents an algorithm for intrusion detection that combines both fuzzy C Means (FCM) and FCM for symbolic features algorithms in one. Experimental results on the Knowledge Discovery and Data Mining Cup 1999 (KDD cup 99) intrusion detection dataset show that the average detection rate of this algorithm is 99%. The results indicate that the proposed algorithm is able to distinguish between normal and attack behaviors with high detection rate.
Keywords :
Fuzzy Clustering , Fuzzy C mean , Intrusion Detection , Mixed Features , Symbolic data.
Journal title :
Iraqi Journal Of Science
Journal title :
Iraqi Journal Of Science