虚拟网络对机器学习异常检测的影响

Daniel Spiekermann, J. Keller
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引用次数: 2

摘要

在现代网络中传输的大量网络数据包以及高速传输阻碍了成功的IT安全机制的实现。除此之外,虚拟网络创建了高度动态和灵活的环境,这与过去十年中众所周知的基础设施有很大不同。以隐蔽通道检测、恶意软件使用或异常检测为目标的网络取证调查面临着新的问题,且耗时、易出错且过程复杂。机器学习提供了先进的技术,以更低的错误率更快地完成这项工作。根据学习技术的不同,算法几乎不需要任何必要的交互来检测传输的网络数据包中的相关事件。会注意到发生的更改,并可能启动其他流程。目前的算法在静态环境下工作良好,但虚拟网络的高动态环境会产生额外的事件,这可能会激怒异常检测算法。本文分析了VXLAN、GRE、GENVE等虚拟网络协议及其对环境异常检出率的影响。我们的研究表明,在最坏的情况下,如果检测到变化,需要对网络数据进行适应性预处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Virtual Networks on Anomaly Detection with Machine Learning
The enormous number of network packets transferred in modern networks together with the high-speed transmissions hamper the implementation of successful IT security mechanisms. In addition to this, virtual networks create highly dynamic and flexible environments, which differ widely from well-known infrastructures of the past decade. Network forensic investigation aiming at the detection of covert channels, malware usage or anomaly detection is faced with new problems and gets a time-consuming, error-prone and complex process. Machine learning provides advanced techniques to perform this work faster with a lower error rate. Depending on the learning technique, algorithms work nearly without any necessary interaction to detect relevant events in the transferred network packets. Occurring changes are noticed and additional processes might be started. Current algorithms work well in static environments, but the highly-dynamic environments of virtual networks create additional events, which might irritate the anomaly detection algorithms. This paper analyses virtual network protocols like VXLAN, GRE and GENVE and their impact of the detection rate of anomalies in the environment. Our research shows the need for adapted pre-processing of the network data, in the worst case on demand if changes are detected.
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