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Classification for DGA-Based Malicious Domain Names with Deep Learning Architectures

机译:使用深度学习架构对基于DGA的恶意域名进行分类

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The preemptive defenses against various malware created by domain generation algorithms (DGAs) have traditionally been solved using manually-crafted domain features obtained by heuristic process. However, it is difficult to achieve real-world deployment with most research on detecting DGA-based malicious domain names due to poor performance and time consuming. Based on the recent overwhelming success of deep learning networks in a broad range of applications, this article transfers five advanced learned ImageNet models from Alex Net, VGG, Squeeze Net, Inception, Res Net to classify DGA domains and non-DGA domains, which: (i) is suited to automate feature extraction from raw inputs; (ii) has fast inference speed and good accuracy performance; and (iii) is capable of handling large-scale data. The results show that the proposed approach is effective and efficient.
机译:传统上,通过使用启发式过程获得的人工设计的域功能,可以解决针对由域生成算法(DGA)创建的各种恶意软件的先发防御。但是,由于性能差且耗时,大多数有关检测基于DGA的恶意域名的研究很难实现实际部署。基于深度学习网络在广泛的应用领域中最近取得的巨大成功,本文从Alex Net,VGG,Squeeze Net,Inception,Res Net转移了五个高级学习的ImageNet模型,以对DGA域和非DGA域进行分类: (i)适合从原始输入中自动提取特征; (ii)具有快速的推理速度和良好的准确性; (iii)能够处理大规模数据。结果表明,该方法是有效的。

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