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Building Multiclass Classification Baselines for Anomaly-based Network Intrusion Detection Systems

机译:为基于异常的网络入侵检测系统构建多类分类基准

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This paper showcases multiclass classification baselines using different machine learning algorithms and neural networks for distinguishing legitimate network traffic from direct and obfuscated network intrusions. This research derives its baselines from Advanced Security Network Metrics & Tunneling Obfuscations dataset. The dataset captured legitimate and obfuscated malicious TCP communications on selected vulnerable network services. The multiclass classification NIDS is able to distinguish obfuscated and direct network intrusion with up to 95% accuracy.
机译:本文展示了使用不同的机器学习算法和神经网络的多类分类基准,以区分合法的网络流量和直接的,混淆的网络入侵。这项研究从“高级安全网络度量标准和隧道混淆”数据集得出其基线。数据集在选定的易受攻击的网络服务上捕获了合法且模糊不清的恶意TCP通信。多类分类NIDS能够以高达95%的准确度区分混淆的和直接的网络入侵。

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