Toward a Reliable Evaluation of Machine Learning Schemes for Network-Based Intrusion Detection

E. Viegas, Altair O. Santin, Pietro Tedeschi
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引用次数: 1

Abstract

Over the last years, several works introduced network-based intrusion detection schemes based on machine learning techniques for securing IoT devices. Despite the promising results, proposed approaches are rarely adopted in production environments. Networked environments exhibit highly unpredictable behavior, unlike other areas where machine learning has been effectively adopted. Unfortunately, the changing behavior during the time may lead to higher classification errors than those measured in the test phase. In this study, we demonstrate that the existing machine learning techniques applied for network traffic classification fail when facing the characteristics of real-world environments. The experiments analyzed more than 30 TB of data spanning 10 years of real network traffic and 9 intrusion detection datasets. Besides the analysis, we define a set of guidelines to build reliable application of machine learning for network traffic classification, which may guide future research and ensure the reliability of machine learning model deployment in production environments.
基于网络的入侵检测机器学习方案的可靠评估
在过去的几年中,一些工作介绍了基于机器学习技术的基于网络的入侵检测方案,以保护物联网设备。尽管有很好的结果,但所提出的方法很少在生产环境中采用。与机器学习已被有效采用的其他领域不同,网络环境表现出高度不可预测的行为。不幸的是,在此期间不断变化的行为可能导致比测试阶段测量的分类错误更高的分类错误。在这项研究中,我们证明了现有的用于网络流量分类的机器学习技术在面对现实世界环境的特征时是失败的。实验分析了超过30 TB的数据,跨越10年的真实网络流量和9个入侵检测数据集。除了分析之外,我们还定义了一套用于构建可靠的机器学习网络流量分类应用的指南,可以指导未来的研究,并确保机器学习模型在生产环境中部署的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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