Ibrahim, W. N. H. and Anuar, S. and Selamat, A. and Krejcar, O. and Crespo, R. G. and Viedma, E. H. and Fujita, H. (2021) Multilayer framework for botnet detection using machine learning algorithms. IEEE Access, 9 . ISSN 2169-3536
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Official URL: http://dx.doi.org/10.1109/ACCESS.2021.3060778
Abstract
A botnet is a malware program that a hacker remotely controls called a botmaster. Botnet can perform massive cyber-attacks such as DDOS, SPAM, click-fraud, information, and identity stealing. The botnet also can avoid being detected by a security system. The traditional method of detecting botnets commonly used signature-based analysis unable to detect unseen botnets. The behavior-based analysis seems like a promising solution to the current trends of botnets that keep evolving. This paper proposes a multilayer framework for botnet detection using machine learning algorithms that consist of a filtering module and classification module to detect the botnet's command and control server. We highlighted several criteria for our framework, such as it must be structure-independent, protocol-independent, and able to detect botnet in encapsulated technique. We used behavior-based analysis through flow-based features that analyzed the packet header by aggregating it to a 1-s time. This type of analysis enables detection if the packet is encapsulated, such as using a VPN tunnel. We also extend the experiment using different time intervals, but a 1-s time interval shows the most impressive results. The result shows that our botnet detection method can detect up to 92% of the f-score, and the lowest false-negative rate was 1.5%.
Item Type: | Article |
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Uncontrolled Keywords: | behavior-based analysis, botnet, flow-based feature selection |
Subjects: | T Technology > TK Electrical engineering. Electronics Nuclear engineering |
Divisions: | Malaysia-Japan International Institute of Technology |
ID Code: | 94924 |
Deposited By: | Narimah Nawil |
Deposited On: | 29 Apr 2022 21:55 |
Last Modified: | 29 Apr 2022 21:55 |
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