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Explaining Deep Learning-Based Traffic Classification Using a Genetic Algorithm

机译:使用遗传算法解释基于深度学习的流量分类

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Traffic classification is widely used in various network functions such as software-defined networking and network intrusion detection systems. Many traffic classification methods have been proposed for classifying encrypted traffic by utilizing a deep learning model without inspecting the packet payload. However, they have an important challenge in that the mechanism of deep learning is inexplicable. A malfunction of the deep learning model may occur if the training dataset includes malicious or erroneous data. Explainable artificial intelligence (XAI) can give some insight for improving the deep learning model by explaining the cause of the malfunction. In this paper, we propose a method for explaining the working mechanism of deep-learning-based traffic classification as a method of XAI based on a genetic algorithm. We describe the mechanism of the deep-learning-based traffic classifier by quantifying the importance of each feature. In addition, we leverage the genetic algorithm to generate a feature selection mask that selects important features in the entire feature set. To demonstrate the proposed explanation method, we implemented a deep-learning-based traffic classifier with an accuracy of approximately 97.24%. In addition, we present the importance of each feature derived from the proposed explanation method by defining the dominance rate.
机译:流量分类广泛用于各种网络功能,如软件定义的网络和网络入侵检测系统。已经提出了许多流量分类方法来通过利用深度学习模型来分类加密流量而不检查数据包有效载荷。然而,他们有一个重要的挑战,因为深入学习的机制是莫名其妙的。如果训练数据集包括恶意或错误数据,可能会发生深学习模型的故障。可解释的人工智能(XAI)可以通过解释故障原因来提高改善深度学习模式。本文提出了一种解释基于深学习的流量分类的工作机制,作为基于遗传算法的Xai方法。通过量化每个功能的重要性,我们描述了基于深度学习的流量分类器的机制。此外,我们利用遗传算法生成特征选择掩码,可以在整个功能集中选择重要的功能。为了展示所提出的解释方法,我们实现了基于深度学习的流量分类器,精度约为97.24%。此外,我们通过定义主导率来展示从所提出的解释方法所产生的每个功能的重要性。

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