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A High Accuracy DNS Tunnel Detection Method Without Feature Engineering

机译:一种高精度DNS隧道检测方法,无需特征工程

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Domain Name System (DNS) is a key protocol and service used on the Internet. It is responsible for converting domain names into IP addresses. DNS tunnel is a method of encoding data of other programs or protocols in DNS query and response. Previous studies usually need to extract a large number of features manually and train the classifier of DNS tunnel detection by feature engineering. In this paper, a new framework for DNS tunnel detection is proposed, which can automatically extract features, including long short-term memory (LSTM) language model with attention mechanism and gated recurrent unit (GRU) language model with attention mechanism. Finally, a single-level classifier based on a character-level convolutional neural network (Char-CNN) is proposed. The results show that the LSTM and GRU language models based on attention mechanism and the algorithm of character-level convolution neural network achieve high accuracy and near-zero false positives.
机译:域名系统(DNS)是Internet上使用的关键协议和服务。 它负责将域名转换为IP地址。 DNS隧道是一种在DNS查询和响应中编码其他程序或协议的数据的方法。 以前的研究通常需要手动提取大量特征并通过特征工程培训DNS隧道检测的分类器。 在本文中,提出了一种用于DNS隧道检测的新框架,可以自动提取特征,包括具有注意机制的注意机制和门控复发单元(GRU)语言模型的长短短期内存(LSTM)语言模型。 最后,提出了一种基于字符级卷积神经网络(CHAR-CNN)的单级分类器。 结果表明,基于注意机制的LSTM和GRU语言模型和字符级卷积神经网络算法实现了高精度和近零的误报。

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