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Model fusion of deep neural networks for anomaly detection

Nouar AlDahoul, Hezerul Abdul Karim, Abdulaziz Saleh Ba Wazir

2021Journal Of Big Data27 citationsDOIOpen Access PDF

Abstract

Abstract Network Anomaly Detection is still an open challenging task that aims to detect anomalous network traffic for security purposes. Usually, the network traffic data are large-scale and imbalanced. Additionally, they have noisy labels. This paper addresses the previous challenges and utilizes million-scale and highly imbalanced ZYELL’s dataset. We propose to train deep neural networks with class weight optimization to learn complex patterns from rare anomalies observed from the traffic data. This paper proposes a novel model fusion that combines two deep neural networks including binary normal/attack classifier and multi-attacks classifier. The proposed solution can detect various network attacks such as Distributed Denial of Service (DDOS), IP probing, PORT probing, and Network Mapper (NMAP) probing. The experiments conducted on a ZYELL’s real-world dataset show promising performance. It was found that the proposed approach outperformed the baseline model in terms of average macro Fβ score and false alarm rate by 17% and 5.3%, respectively.

Topics & Concepts

Computer scienceDenial-of-service attackArtificial intelligenceArtificial neural networkAnomaly detectionData miningDeep learningClassifier (UML)Constant false alarm rateMachine learningPattern recognition (psychology)The InternetWorld Wide WebNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsInternet Traffic Analysis and Secure E-voting
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