基于深度包检测的网络流量分析

L. Deri, F. Fusco
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引用次数: 3

摘要

近年来,我们观察到网络安全攻击的升级,这些攻击变得越来越复杂,越来越难以检测,因为它们使用了更先进的规避技术和加密通信。研究界经常提出使用机器学习技术来克服基于规则和签名的传统网络安全方法的局限性,这些方法难以维护,需要不断更新,并且不能解决零日攻击的问题。不幸的是,机器学习并不是网络安全的圣杯:由于缺乏注释数据,基于机器学习的技术很难开发,通常是计算密集型的,它们可能成为难以检测到的对抗性攻击的目标,更重要的是,它们通常无法为预测的结果提供解释。在本文中,我们描述了一种利用安全分数概念进行网络安全检测的新方法。我们的方法表明,通过深度数据包检测提取信号为使用流量分析进行有效检测铺平了道路。这项工作已经针对包含网络攻击的各种流量数据集进行了验证,表明它可以有效地检测网络威胁,而不会像基于机器学习的解决方案那样复杂。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Deep Packet Inspection in CyberTraffic Analysis
In recent years we have observed an escalation of cybersecurity attacks, which are becoming more sophisticated and harder to detect as they use more advanced evasion techniques and encrypted communications. The research community has often proposed the use of machine learning techniques to overcome the limitations of traditional cybersecurity approaches based on rules and signatures, which are hard to maintain, require constant updates, and do not solve the problems of zero-day attacks. Unfortunately, machine learning is not the holy grail of cybersecurity: machine learning-based techniques are hard to develop due to the lack of annotated data, are often computationally intensive, they can be target of hard to detect adversarial attacks, and more importantly are often not able to provide explanations for the predicted outcomes. In this paper, we describe a novel approach to cybersecurity detection leveraging on the concept of security score. Our approach demonstrates that extracting signals via deep packet inspections paves the way for efficient detection using traffic analysis. This work has been validated against various traffic datasets containing network attacks, showing that it can effectively detect network threats without the complexity of machine learning-based solutions.
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