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A hybrid unsupervised clustering-based anomaly detection method

journal contribution
posted on 2024-11-17, 15:10 authored by Guo Pu, Lijuan Wang, Jun Shen, Fang Dong
In recent years, machine learning-based cyber intrusion detection methods have gained increasing popularity. The number and complexity of new attacks continue to rise; therefore, effective and intelligent solutions are necessary. Unsupervised machine learning techniques are particularly appealing to intrusion detection systems since they can detect known and unknown types of attacks as well as zero-day attacks. In the current paper, we present an unsupervised anomaly detection method, which combines Sub-Space Clustering (SSC) and One Class Support Vector Machine (OCSVM) to detect attacks without any prior knowledge. The proposed approach is evaluated using the well-known NSL-KDD dataset. The experimental results demonstrate that our method performs better than some of the existing techniques.

Funding

National Natural Science Foundation of China (61702398)

History

Journal title

Tsinghua Science and Technology

Volume

26

Issue

2

Pagination

146-153

Language

English

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