利用网络流量的机器学习分析识别外部窃听者的用户应用

Sina Fathi Kazerooni, Yagiz Kaymak, R. Rojas-Cessa
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引用次数: 6

摘要

窃听者可以通过收集和分析一个人使用的计算机应用程序所产生的网络流量来推断他们使用的计算机应用程序。尽管对生成的数据包应用加密,也可以执行这种推断。在本文中,我们研究了几种机器学习算法在用户生成的网络流量上执行这种隐私泄露的能力程度。我们通过分析生成流量的几个统计属性来衡量它们在识别不同应用程序方面的准确性,而不是查看加密的内容。比较这些算法的性能,选择精度较高的算法;随机森林。我们还评估了数据包填充的应用,以修改数据包长度,以避免被机器学习算法识别。我们测试了包填充对各种机器学习算法识别能力的影响。我们详细研究了随机森林算法应用于完整和填充流量时的性能。我们表明填充可能会降低机器学习算法在应用程序分类时的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of User Application by an External Eavesdropper using Machine Learning Analysis on Network Traffic
An eavesdropper may infer the computer applications a person uses by collecting and analyzing the network traffic they generate. Such inference may be performed despite applying encryption on the generated packets. In this paper, we investigate the extent of the ability of several machine learning algorithms to perform this privacy breach on the network traffic generated by a user. We measure their accuracy in identifying different applications by analyzing several statistical properties of the generated traffic rather than looking into the encrypted content. We compare the performance of these algorithms and select the one with higher precision; random forest. We also evaluate the application of packet padding to modify the packet length to avoid identification by machine learning algorithms. We test the effect of packet padding on the identification ability of the various machine-learning algorithms. We investigate the performance of the random forest algorithm in detail when applied to intact and padded traffic. We show that padding may decrease the efficacy of a machine-learning algorithm when used for application classification.
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