POCAD: A novel pay load-based one-class classifier for anomaly detection

Xuan Nam Nguyen,Dai Tho Nguyen,Long Hai Vu

2016 3rd National Foundation for Science and Technology Development Conference on Information and Computer Science (NICS)(2016)

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摘要
In this paper, we propose a novel Payload-based One-class Classifier for Anomaly Detection called POCAD, which combines a generalized 2v-gram feature extractor and a one-class SVM classifier to effectively detect network intrusion attacks. We extensively evaluate POCAD with real-world datasets of HTTP-based attacks. Our experiment results show that POCAD can quickly detect malicious payload and achieves a high detection rate as well as a low false positive rate. The experiment results also show that POCAD outperforms state of the art payload-based detection schemes such as McPAD [4] and PAYL [8].
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关键词
POCAD,pay load-based one-class classifier,anomaly detection,generalized 2v-gram feature extractor,one-class SVM classifier,network intrusion attacks,HTTP-based attacks,malicious payload,McPAD,PAYL
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