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isAnon: Flow-Based Anonymity Network Traffic Identification Using Extreme Gradient Boosting

机译:isAnon:使用极端梯度提升的基于流的匿名网络流量识别

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The abuse of anonymous communication technology brings serious challenges to network supervision. The valid identification of anonymity network traffic is a prerequisite and fundamentally important for preventing the violence of such techniques. However, due to the distinct characteristics of flow from anonymity networks including Tor, I2P, and JonDonym, existing studies don’t take full advantage of these features, damaging the accuracy of identification. In this paper, we propose an effective anonymity network traffic identification model, called isAnon. Firstly, isAnon designs a novel hybrid feature selection algorithm by combining Modified Mutual Information and Random Forest (MMIRF) algorithm to filter out some irrelevant and redundant features quickly. Secondly, our proposed model applies a nested cross-validation scheme with an inner 5-fold cross-validation and an outer Monte Carlo cross-validation to prevent model overfitting. Finally, we use the Extreme Gradient Boosting (XGBoost) algorithm to identify Tor, I2P, and JonDonym networks for four scenarios. Comprehensive experimental results on several real-world anonymity network traffic datasets clearly show the effectiveness of our isAnon model compared with state-of-the-art baseline identification methods.
机译:匿名通信技术的滥用给网络监管带来了严峻的挑战。有效识别匿名网络流量是防止此类技术遭受暴力侵害的先决条件和根本重要性。但是,由于包括Tor,I2P和JonDonym在内的匿名网络的流量具有明显的特征,因此现有研究并未充分利用这些功能,从而损害了识别的准确性。在本文中,我们提出了一种有效的匿名网络流量识别模型,称为isAnon。首先,isAnon设计了一种新颖的混合特征选择算法,它结合了改进的互信息和随机森林(MMIRF)算法来快速过滤掉一些无关和冗余的特征。其次,我们提出的模型应用了嵌套的交叉验证方案,该方案具有内部5倍交叉验证和外部Monte Carlo交叉验证,以防止模型过度拟合。最后,我们使用极端梯度增强(XGBoost)算法来针对四种情况识别Tor,I2P和JonDonym网络。在多个真实世界匿名网络流量数据集上的综合实验结果清楚地表明,与最新的基线识别方法相比,我们的isAnon模型是有效的。

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