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Towards a Deep Learning Approach for Detecting Malicious Domains

机译:迈向检测恶意域的深度学习方法

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Domain generation algorithms, called DGAs, are used to generate a lot of pseudo-random domain names. The malware can connect to a command & control(C2) server through these domains, which will cause large threats to network security. Most of previous researches are based on large sets of domains or manual feature extractions. To tackle this issue, current studies pay more attention to deep learning, such as LSTM. However, it is difficult to learn reasonable expression when the domain is long. In this paper, we propose a LSTM model incorporating with attention mechanism, in which attention will focus on more important substrings in domains and improve the expression of domains. The experimental results in real-life datasets demonstrate our model has a priority in both false alarm rate decreased to 1.29% and false negative rate reduced to 0.76%. Furthermore, our model also has a better performance in multilabel detection.
机译:域生成算法(称为DGA)用于生成许多伪随机域名。恶意软件可以通过这些域连接到Command&Control(C2)服务器,这将对网络安全造成巨大威胁。以前的大多数研究都是基于大量的域或手动特征提取。为了解决这个问题,当前的研究更加关注深度学习,例如LSTM。但是,当域长时,很难学习合理的表达。在本文中,我们提出了一种结合注意力机制的LSTM模型,其中注意力将集中在域中更重要的子字符串上并改善域的表达。实际数据集中的实验结果表明,我们的模型在误报率降低到1.29%和误报率降低到0.76%方面都具有优先权。此外,我们的模型在多标签检测中也具有更好的性能。

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