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Man-in-the-Middle Attacks to Detect and Identify Services in Encrypted Network Flows using Machine Learning

机译:使用机器学习来检测和识别加密网络流中的服务的中间人攻击

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摘要

Wireless access points are deployed rapidly as users demand to grow massively to meet sufficient quality of services. Recently, the need for internet utility is enormously rising as the era of streaming social media services highly entailed which are the utmost treasured for the users. However, these applications are classified as encrypted network traffic mainly to protect and to adhere to users’ privacy. On the other hand, Machine Learning (ML) adopted in a wide range of data classification as an efficient approach to organize indistinct data. The ML algorithms are accommodating any type of information which can be structured or unstructured data to distinguish rational patterns that can result in an understanding of superior decisions and forecasts. Therefore, in this work, we elaborate on a lab experiment of the Man-in-the-Middle (MITM) attack which sniffs the encrypted network traffic and analyzes it in rich details through a supervised ML approach to classify the social media applications.
机译:随着用户要求大规模增长以满足足够的服务质量,无线接入点得以快速部署。近来,随着流媒体社交媒体服务时代的到来,对互联网实用程序的需求正在极大地增加,这对于用户而言是最宝贵的。但是,这些应用程序被归类为加密的网络流量,主要是为了保护并遵守用户的隐私。另一方面,机器学习(ML)在广泛的数据分类中被采用为组织模糊数据的有效方法。 ML算法可容纳任何类型的信息,这些信息可以是结构化数据或非结构化数据,以区分合理的模式,从而可以理解高级决策和预测。因此,在这项工作中,我们详细说明了中间人(MITM)攻击的实验室实验,该实验嗅探加密的网络流量,并通过监督的ML方法对社交媒体应用程序进行分类,对其进行了详尽的分析。

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