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DGA CapsNet: 1D Application of Capsule Networks to DGA Detection

机译:DGA CapsNet:胶囊网络在DGA检测中的一维应用

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Domain generation algorithms (DGAs) represent a class of malware used to generate large numbers of new domain names to achieve command-and-control (C2) communication between the malware program and its C2 server to avoid detection by cybersecurity measures. Deep learning has proven successful in serving as a mechanism to implement real-time DGA detection, specifically through the use of recurrent neural networks (RNNs) and convolutional neural networks (CNNs). This paper compares several state-of-the-art deep-learning implementations of DGA detection found in the literature with two novel models: a deeper CNN model and a one-dimensional (1D) Capsule Networks (CapsNet) model. The comparison shows that the 1D CapsNet model performs as well as the best-performing model from the literature.
机译:域生成算法(DGA)代表一类恶意软件,用于生成大量新域名,以实现恶意软件程序与其C2服务器之间的命令和控制(C2)通信,从而避免通过网络安全措施进行检测。事实证明,深度学习已成功地用作实现实时DGA检测的机制,特别是通过使用递归神经网络(RNN)和卷积神经网络(CNN)。本文使用两种新颖的模型对文献中发现的DGA检测的几种最新深度学习实施方案进行了比较:一种更深的CNN模型和一维(1D)胶囊网络(CapsNet)模型。比较表明,一维CapsNet模型的性能与文献中的最佳模型相同。

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