数据驱动网络入侵检测研究进展

Dylan Chou, Meng Jiang
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引用次数: 50

摘要

与正常流量相比,数据驱动网络入侵检测(NID)具有少数攻击类的倾向。许多数据集是在模拟环境中收集的,而不是在现实世界的网络中。这些挑战通过将机器学习模型拟合到不具代表性的“沙盒”数据集,破坏了入侵检测机器学习模型的性能。本调查提出了一个分类法的八个主要挑战,并探讨了1999年至2020年的常用数据集。分析了过去十年的趋势和挑战,并提出了将NID扩展到基于云的环境,为大型网络数据设计可扩展模型以及创建在现实网络中收集的标记数据集的未来方向。
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A Survey on Data-driven Network Intrusion Detection
Data-driven network intrusion detection (NID) has a tendency towards minority attack classes compared to normal traffic. Many datasets are collected in simulated environments rather than real-world networks. These challenges undermine the performance of intrusion detection machine learning models by fitting machine learning models to unrepresentative “sandbox” datasets. This survey presents a taxonomy with eight main challenges and explores common datasets from 1999 to 2020. Trends are analyzed on the challenges in the past decade and future directions are proposed on expanding NID into cloud-based environments, devising scalable models for large network data, and creating labeled datasets collected in real-world networks.
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