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On the use of machine learning for identifying botnet network traffic

机译:关于使用机器学习识别僵尸网络流量

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摘要

During the last decade significant scientific efforts have been invested in the development of methods that could provide efficient and effective botnet detection. As a result, an array of detection methods based on diverse technical principles and targeting various aspects of botnet phenomena have been defined. As botnets rely on the Internet for both communicating with the attacker as well as for implementing different attack campaigns, network traffic analysis is one of the main means of identifying their existence. In addition to relying on traffic analysis for botnet detection, many contemporary approaches use machine learning techniques for identifying malicious traffic. This paper presents a survey of contemporary botnet detection methods that rely on machine learning for identifying botnet network traffic. The paper provides a comprehensive overview on the existing scientific work thus contributing to the better understanding of capabilities, limitations and opportunities of using machine learning for identifying botnet traffic. Furthermore, the paper outlines possibilities for the future development of machine learning-based botnet detection systems.
机译:在过去的十年中,已经投入了大量的科学努力来开发可以提供有效且有效的僵尸网络检测方法。结果,已经定义了一系列基于不同技术原理并针对僵尸网络现象各个方面的检测方法。由于僵尸网络依靠Internet与攻击者进行通信并实施不同的攻击活动,因此网络流量分析是识别其存在的主要手段之一。除了依靠流量分析进行僵尸网络检测外,许多现代方法还使用机器学习技术来识别恶意流量。本文介绍了对当代僵尸网络检测方法的调查,这些方法依靠机器学习来识别僵尸网络网络流量。本文提供了对现有科学工作的全面概述,从而有助于更好地理解使用机器学习识别僵尸网络流量的能力,局限性和机会。此外,本文还概述了基于机器学习的僵尸网络检测系统未来发展的可能性。

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