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Detection of DNS Tunneling in Mobile Networks Using Machine Learning

机译:使用机器学习检测移动网络中的DNS隧道

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Lately, costly and threatening DNS tunnels on the mobile networks bypassing the mobile operator's Policy and Charging Enforcement Function (PCEF), has shown the vulnerability of the mobile networks caused by the Domain Name System (DNS) which calls for protection solutions. Unfortunately there is currently no really adequate solution. This paper proposes to use machine learning techniques in the detection and mitigation of a DNS tunneling in mobile networks. Two machine learning techniques, namely One Class Support Vector Machine (OCSVM) and K-Means are experimented and the results prove that machine learning techniques could yield quite efficient detection solutions. The paper starts with a comprehensive introduction to DNS tunneling in mobile networks. Next the challenges in DNS tunneling detections are reviewed. The main part of the paper is the description of proposed DNS tunneling detection using machine learning.
机译:近来,绕过移动运营商的策略和计费执行功能(PCEF)的移动网络上昂贵且具有威胁性的DNS隧道显示了由域名系统(DNS)引起的移动网络的脆弱性,这需要保护解决方案。不幸的是,目前还没有真正合适的解决方案。本文提出在移动网络中DNS隧道的检测和缓解中使用机器学习技术。实验了两种机器学习技术,即一类支持向量机(OCSVM)和K-Means,结果证明机器学习技术可以提供非常有效的检测解决方案。本文首先全面介绍了移动网络中的DNS隧道。接下来,将回顾DNS隧道检测中的挑战。本文的主要部分是对使用机器学习进行DNS隧道检测的建议的描述。

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