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Anomaly Based Network Intrusion Detection with Unsupervised Outlier Detection

241

Citations

15

References

2006

Year

Abstract

Anomaly detection is a critical issue in Network Intrusion Detection Systems (NIDSs). Most anomaly based NIDSs employ supervised algorithms, whose performances highly depend on attack-free training data. However, this kind of training data is difficult to obtain in real world network environment. Moreover, with changing network environment or services, patterns of normal traffic will be changed. This leads to high false positive rate of supervised NIDSs. Unsupervised outlier detection can overcome the drawbacks of supervised anomaly detection. Therefore, we apply one of the efficient data mining algorithms called random forests algorithm in anomaly based NIDSs. Without attack-free training data, random forests algorithm can detect outliers in datasets of network traffic. In this paper, we discuss our framework of anomaly based network intrusion detection. In the framework, patterns of network services are built by random forests algorithm over traffic data. Intrusions are detected by determining outliers related to the built patterns. We present the modification on the outlier detection algorithm of random forests. We also report our experimental results over the KDD'99 dataset. The results show that the proposed approach is comparable to previously reported unsupervised anomaly detection approaches evaluated over the KDD' 99 dataset.

References

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