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Differentiation of Sliding Rescaled Ranges: New Approach to Encrypted and VPN Traffic Detection

机译:滑动重新定位范围的分化:加密和VPN流量检测的新方法

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We propose a new approach to traffic preprocessing called Differentiation of Sliding Rescaled Ranges (DSRR) expanding the ideas laid down by H.E. Hurst. We apply proposed approach on the characterizing encrypted and unencrypted traffic on the well-known ISCXVPN2016 dataset. We deploy DSRR for flow-base features and then solve the task VPN vs nonVPN with basic machine learning models. With DSRR and Random Forest, we obtain 0.971 Precision, 0.969 Recall and improve this result to 0.976 using statistical analysis of features in comparison with Neural Network approach that gives 0.93 Precision via 2D-CNN. The proposed method and the results can be found at https://github.com/AleksandrIvchenko/dsrr_vpn_nonvpn.
机译:我们提出了一种新的交通预处理方法,称为滑动重新分配范围(DSRR)的分化扩展了H.E.的想法。 赫斯特。 我们在众所周知的ISCXVPN2016数据集上应用了对特性加密和未加密流量的提出方法。 我们部署了DSRR进行流量基本功能,然后用基本机器学习模型解决任务VPN VS NONVPN。 随着DSRR和随机森林,我们获得0.971精度,0.969召回并使用与Neural网络方法的统计分析进行统计分析,将其提高到0.976,以便通过2D-CNN提供0.93精度。 所提出的方法和结果可以在https://github.com/aleksandrivchenko/dsrr_vpn_nonvpn找到。

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