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Machine learning for network-based malware detection

机译:基于网络的恶意软件检测的机器学习

摘要

This thesis explores how can network traffic analysis be used for accurate and efficient detection of malware network activities. The thesis focuses on botnet detection by devising novel detection approaches that are aimed at identifying malware network activity at different points in the network and based on different, mutually complementary, principles of traffic analysis. The proposed approaches rely on machine learning algorithms (MLAs) for automated and resource-efficient identification of the patterns of malicious network traffic. We evaluated the proposed methods through extensive evaluations using traffic traces from honeypots and malware testing environments as well as operational ISP networks. Based on the evaluation, the novel detection methods provide accurate and efficient identification of malicious network traffic, thus being promising in the light of operational deployment. Furthermore, the thesis provides an overview of some of the biggest challenges of using MLAs for identifying malicious network activities. The challenge specially addressed by the thesis is the “ground truth” problem, where we proposed a novel labeling approach for obtaining the ground truth on agile DNS traffic that provides reliable and time-efficient labeling. Finally, the thesis outlines the opportunities for future work on realizing robust and effective detection solutions.
机译:本文探讨如何将网络流量分析用于准确有效地检测恶意软件网络活动。本文通过设计新颖的检测方法来专注于僵尸网络检测,该方法旨在识别网络中不同点的恶意软件网络活动,并基于不同的,相互补充的流量分析原理。所提出的方法依靠机器学习算法(MLA)来自动和资源有效地识别恶意网络流量的模式。我们使用蜜罐和恶意软件测试环境以及可运营的ISP网络的流量跟踪信息,通过广泛的评估来评估所提出的方法。基于评估,新颖的检测方法可以准确有效地识别恶意网络流量,因此从操作部署的角度来看是有希望的。此外,本文概述了使用MLA识别恶意网络活动的一些最大挑战。本文专门解决的挑战是“地面真相”问题,我们提出了一种新颖的标记方法来获取敏捷DNS流量的地面真相,该方法可提供可靠且高效的标记。最后,本文概述了未来实现稳健有效的检测解决方案的机会。

著录项

  • 作者

    Stevanovic Matija;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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