基于CNN轻量级架构的恶意软件分类:MalShuffleNet

Lin Qiu, Shuo Wang, Jian Wang, Yifei Wang, Wei Huang
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引用次数: 1

摘要

传统的恶意软件检测方法难以检测出大量的恶意软件变体。基于恶意软件可视化的恶意软件检测已被证明是识别未知恶意软件变体的有效方法。为了提高上述方法的准确率和减少检测时间,提出了一种基于轻量级CNN架构的恶意软件分类新方法MalshuffleNet。该模型是在ShuffleNet V2的基础上,通过调整全连接层的数量来定制的,以适应恶意软件的分类。在Malimg数据集上的实验结果表明,该模型的准确率达到99.03%,识别未知恶意软件的平均时间仅为5.3毫秒。
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Malware Classification based on a Light-weight Architecture of CNN: MalShuffleNet
Traditional methods of malware detection have difficulty in detecting massive malware variants. Malware detection based on malware visualization has been proved an effective method for identifying unknown malware variants. In order to improve the accuracy and reduce the detection time of above methods, a novel method for malware classification in a light-weight CNN architecture named MalshuffleNet is proposed. The model is customized based on ShuffleNet V2 by adjusting the numbers of the fully connected layer for adopting to malware classification. Empirical results on Malimg dataset indicate that our model achieves 99.03% in accuracy, and identify an unknown malware only taking 5.3 milliseconds on average.
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