DocumentCode :
840001
Title :
Random-Forests-Based Network Intrusion Detection Systems
Author :
Zhang, Jiong ; Zulkernine, Mohammad ; Haque, Anwar
Author_Institution :
TELUS, Toronto, ON
Volume :
38
Issue :
5
fYear :
2008
Firstpage :
649
Lastpage :
659
Abstract :
Prevention of security breaches completely using the existing security technologies is unrealistic. As a result, intrusion detection is an important component in network security. However, many current intrusion detection systems (IDSs) are rule-based systems, which have limitations to detect novel intrusions. Moreover, encoding rules is time-consuming and highly depends on the knowledge of known intrusions. Therefore, we propose new systematic frameworks that apply a data mining algorithm called random forests in misuse, anomaly, and hybrid-network-based IDSs. In misuse detection, patterns of intrusions are built automatically by the random forests algorithm over training data. After that, intrusions are detected by matching network activities against the patterns. In anomaly detection, novel intrusions are detected by the outlier detection mechanism of the random forests algorithm. After building the patterns of network services by the random forests algorithm, outliers related to the patterns are determined by the outlier detection algorithm. The hybrid detection system improves the detection performance by combining the advantages of the misuse and anomaly detection. We evaluate our approaches over the knowledge discovery and data mining 1999 (KDDpsila99) dataset. The experimental results demonstrate that the performance provided by the proposed misuse approach is better than the best KDDpsila99 result; compared to other reported unsupervised anomaly detection approaches, our anomaly detection approach achieves higher detection rate when the false positive rate is low; and the presented hybrid system can improve the overall performance of the aforementioned IDSs.
Keywords :
computer networks; data mining; knowledge based systems; security of data; IDSs; NIDSs; anomaly detection; computer network security; data mining algorithm; intrusion detection systems; knowledge discovery; misuse detection; network activities; network intrusion detection systems; outlier detection mechanism; random forests algorithm; rule-based systems; security breaches; Cryptography; Data mining; Data security; Detection algorithms; Encoding; Information security; Intrusion detection; Knowledge based systems; Pattern matching; Training data; Computer network security; data mining; intrusion detection; random forests;
fLanguage :
English
Journal_Title :
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
Publisher :
ieee
ISSN :
1094-6977
Type :
jour
DOI :
10.1109/TSMCC.2008.923876
Filename :
4603103
Link To Document :
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