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Framework for Zombie Detection Using Neural Networks

机译:使用神经网络进行僵尸检测的框架

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摘要

One of the most important threats to personal and corporate Internet security is the proliferation of zombie PCs operating as an organized network. Zombie detection is currently performed at the host level and/or network level, but these options have some important drawbacks: antivirus, anti-spyware and personal firewalls are ineffective in the detection of hosts that are compromised via new or target-specific malicious software, while network firewalls and intrusion detection systems were developed to protect the network from external attacks but they were not designed to detect and protect against vulnerabilities that are already present inside the local area network. This paper presents a new approach, based on neural networks, that is able to detect zombie PCs based on the historical traffic profiles presented by "licit" and "illicit" network applications. The evaluation of the proposed methodology relies on traffic traces obtained in a controlled environment and composed by licit traffic measured from normal activity of network applications and malicious traffic synthetically generated using the subseven backdoor. The results obtained show that the proposed methodology is able to achieve good identification results, being at the same time computationally efficient and easy to deploy in real network scenarios.
机译:个人和企业Internet安全的最重要威胁之一是作为组织网络运行的僵尸PC的扩散。目前,僵尸检测是在主机级别和/或网络级别执行的,但是这些选项有一些重要的缺点:防病毒,反间谍软件和个人防火墙在检测通过新的或特定于目标的恶意软件入侵的主机方面无效,虽然开发了网络防火墙和入侵检测系统来保护网络免受外部攻击,但是它们并不是为了检测和防御局域网中已经存在的漏洞而设计的。本文提出了一种基于神经网络的新方法,该方法能够基于“合法”和“非法”网络应用程序提供的历史流量概况来检测僵尸PC。对提出的方法的评估依赖于在受控环境中获得的流量跟踪,该流量跟踪由根据网络应用程序的正常活动测得的合法流量和使用七个后门综合生成的恶意流量组成。获得的结果表明,所提出的方法能够获得良好的识别结果,同时计算效率高并且易于在实际网络场景中部署。

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