Title :
A simple and efficient hidden Markov model scheme for host-based anomaly intrusion detection
Author :
Hu, Jiankun ; Yu, Xinghuo ; Qiu, D. ; Chen, Hsiao-Hwa
Abstract :
Extensive research activities have been observed on network-based intrusion detection systems (IDSs). However, there are always some attacks that penetrate traffic-profiling-based network IDSs. These attacks often cause very serious damages such as modifying host critical files. A host-based anomaly IDS is an effective complement to the network IDS in addressing this issue. This article proposes a simple data preprocessing approach to speed up a hidden Markov model (HMM) training for system-call-based anomaly intrusion detection. Experiments based on a public database demonstrate that this data preprocessing approach can reduce training time by up to 50 percent with unnoticeable intrusion detection performance degradation, compared to a conventional batch HMM training scheme. More than 58 percent data reduction has been observed compared to our prior incremental HMM training scheme. Although this maximum gain incurs more degradation of false alarm rate performance, the resulting performance is still reasonable.
Keywords :
hidden Markov models; security of data; HMM training; data preprocessing approach; hidden Markov model scheme; host-based anomaly intrusion detection; system-call-based anomaly intrusion detection; Business; Computer worms; Councils; Data mining; Data preprocessing; Degradation; Hidden Markov models; Intrusion detection; Telecommunication traffic; Traffic control;
Journal_Title :
Network, IEEE
DOI :
10.1109/MNET.2009.4804323