Detecting malicious domain names from domain generation algorithms using bi-directional LSTM network

Suliang Luo, Gang Han, An Li, Jialiang Peng
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引用次数: 0

Abstract

DNS (Domain Name System /DNS) is one of the most important infrastructures of Internet. People can easily access the rich network resources worldwide using the DNS technology. However, the Domain Generation Algorithm (DGA) is also accompanied by the DNS technology, which is used to generate malicious domain names. To detect DGA malicious domains, the previous studies often used unreal small DNS domain name datasets to train the detection models that always overlooked real user data traffic. These models generally did not have good generalization performance. In this paper, we propose a new DGA malicious domain name detection model based on Bi-directional LSTM network. We also propose a new evaluation metric to evaluate the real unlabeled DNS traffic data. Compared with LSTM model, the detection effect of our proposed model is improved effectively. The experimental results show that the precision of the model and the value of AUC reach 98.4% and 0.9079, respectively.
利用双向LSTM网络从域名生成算法中检测恶意域名
DNS (Domain Name System /DNS)是互联网最重要的基础设施之一。利用DNS技术,人们可以方便地访问世界范围内丰富的网络资源。但是,DGA (Domain Generation Algorithm)算法还伴随着DNS技术,用于生成恶意域名。为了检测DGA恶意域,以往的研究往往使用不真实的小型DNS域名数据集来训练检测模型,往往忽略了真实的用户数据流量。这些模型一般没有很好的泛化性能。本文提出了一种新的基于双向LSTM网络的DGA恶意域名检测模型。我们还提出了一种新的评估指标来评估真实的未标记DNS流量数据。与LSTM模型相比,该模型的检测效果得到了有效提高。实验结果表明,该模型的精度达到98.4%,AUC值达到0.9079。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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