DeepSign:用于自动恶意软件签名生成和分类的深度学习

Omid David, N. Netanyahu
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引用次数: 194

摘要

提出了一种基于深度学习的恶意软件签名自动生成与分类方法。该方法使用深度信念网络(DBN),由深度去噪自编码器堆栈实现,生成恶意软件行为的不变紧凑表示。虽然传统的基于签名和令牌的恶意软件检测方法不能检测到现有恶意软件的大多数新变体,但本文提出的结果表明,DBN生成的签名允许对新的恶意软件变体进行准确分类。使用包含几个主要恶意软件家族的数百个变体的数据集,我们的方法使用DBN生成的签名实现了98.6%的分类准确率。所提出的方法是完全不可知的类型的恶意软件行为记录(例如,API调用及其参数,注册表项,网站和端口访问等),并可以使用任何原始输入从沙箱成功训练深度神经网络,这是用来生成恶意软件签名。
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DeepSign: Deep learning for automatic malware signature generation and classification
This paper presents a novel deep learning based method for automatic malware signature generation and classification. The method uses a deep belief network (DBN), implemented with a deep stack of denoising autoencoders, generating an invariant compact representation of the malware behavior. While conventional signature and token based methods for malware detection do not detect a majority of new variants for existing malware, the results presented in this paper show that signatures generated by the DBN allow for an accurate classification of new malware variants. Using a dataset containing hundreds of variants for several major malware families, our method achieves 98.6% classification accuracy using the signatures generated by the DBN. The presented method is completely agnostic to the type of malware behavior that is logged (e.g., API calls and their parameters, registry entries, websites and ports accessed, etc.), and can use any raw input from a sandbox to successfully train the deep neural network which is used to generate malware signatures.
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