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An Efficient Deep Learning Method for Encrypted Traffic Classification on the Web

机译:Web上加密流量分类的一种有效的深度学习方法

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Traffic classification plays an important role in network management and cyber-security. With the development of the Internet, online applications and in the following encrypted techniques, encrypted traffic has changed to a major challenge for traffic classification. In fact, unbalanced data, in which the unbalanced distribution of samples across classes lead to the classification performance reduction, is considered as one of the prominent challenges in encrypted traffic classification. Although previous studies tried to deal with the class imbalance problem in the pre-processing step using machine learning and particularly deep learning models, they are still confronting with some limitations. In this regard, a new classification method is proposed in this paper that tries to deal with the problem of unbalanced data during the training process. The proposed method employs a cost-sensitive convolution neural network and considers a cost for each classification according to the distribution of classes. These costs are then applied to the network along the training process to enhance the overall accuracy. Based on the empirical results, the proposed model obtained higher classification performance (about 2% on average) compared to the Deep Packet method.
机译:流量分类在网络管理和网络安全中起着重要作用。随着Internet,在线应用程序和以下加密技术的发展,加密流量已变成流量分类的主要挑战。实际上,不均衡的数据被认为是加密流量分类中的主要挑战之一,在不均衡的数据中,样本在各个类别之间的不均衡分布会导致分类性能下降。尽管先前的研究试图使用机器学习(尤其是深度学习模型)在预处理步骤中解决班级失衡问题,但它们仍面临一些局限性。为此,本文提出了一种新的分类方法,试图解决训练过程中数据不平衡的问题。所提出的方法采用了成本敏感的卷积神经网络,并根据类的分布考虑了每个分类的成本。然后,这些费用将在培训过程中应用于网络,以提高整体准确性。根据经验结果,与Deep Packet方法相比,该模型获得了更高的分类性能(平均约2%)。

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