TLS Encrypted Application Classification Using Machine Learning with Flow Feature Engineering

Onur Barut, Rebecca S. Zhu, Yan Luo, Tong Zhang
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引用次数: 7

Abstract

Network traffic classification has become increasingly important as the number of devices connected to the Internet is rapidly growing. Proportionally, the amount of encrypted traffic is also increasing, making payload based classification methods obsolete. Consequently, machine learning approaches have become crucial when user privacy is concerned. For this purpose, we propose an accurate, fast, and privacy preserved encrypted traffic classification approach with engineered flow feature extraction and appropriate feature selection. The proposed scheme achieves a 0.92899 macro-average F1 score and a 0.88313 macro-averaged mAP score for the encrypted traffic classification of Audio, Email, Chat, and Video classes derived from the non-vpn2016 dataset. Further experiments on the mixed non-encrypted and encrypted flow dataset with a data augmentation method called Synthetic Minority Over-Sampling Technique are conducted and the results are discussed for TLS-encrypted and mixed flows.
基于流特征工程的机器学习TLS加密应用分类
随着连接到Internet的设备数量的快速增长,网络流分类变得越来越重要。按比例,加密流量的数量也在增加,使基于有效负载的分类方法过时。因此,当涉及到用户隐私时,机器学习方法变得至关重要。为此,我们提出了一种精确、快速、保护隐私的加密流量分类方法,该方法采用工程化的流特征提取和适当的特征选择。该方案对来自非vpn2016数据集的音频、电子邮件、聊天和视频类的加密流分类实现了0.92899的宏观平均F1分数和0.88313的宏观平均mAP分数。在非加密和加密混合流数据集上,采用一种称为合成少数派过采样技术的数据增强方法进行了进一步的实验,并讨论了tls加密和混合流的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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