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A Hybrid Intelligent Approach for Automated Alert Clustering and Filtering in Intrusion Alert Analysis
Author(s) -
Maheyzah Md Siraj,
Mohd Aizaini Maarof,
Siti Zaiton Mohd Hashim
Publication year - 2009
Publication title -
international journal of computer theory and engineering
Language(s) - English
Resource type - Journals
ISSN - 1793-8201
DOI - 10.7763/ijcte.2009.v1.87
Subject(s) - computer science , cluster analysis , intrusion detection system , principal component analysis , data mining , maximization , artificial intelligence , machine learning , unsupervised learning , intrusion , geochemistry , geology , economics , microeconomics
As security threats change and advance in a drastic way, most of the organizations implement multiple Network Intrusion Detection Systems (NIDSs) to optimize detection and to provide comprehensive view of intrusion activities. But NIDSs trigger a massive amount of alerts even for a day and overwhelmed security experts. Thus, automated and intelligent clustering is important to reveal their structural correlation by grouping alerts with common attributes. We propose a new hybrid clustering model based on Improved Unit Range (IUR), Principal Component Analysis (PCA) and unsupervised learning algorithm (Expectation Maximization) to aggregate similar alerts and to reduce the number of alerts. We tested against other unsupervised learning algorithms to validate the performance of the proposed model. Our empirical results show using DARPA 2000 dataset the proposed model gives better results in terms of the clustering accuracy and processing time.

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