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Malware Detection Based on Deep Learning of Behavior Graphs

机译:基于行为图的深度学习的恶意软件检测

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The Internet of Things (IoT) provides various benefits, which makes smart device even closer. With more and more smart devices in IoT, security is not a one-device affair. Many attacks targeted at traditional computers in IoT environment may also aim at other IoT devices. In this paper, we consider an approach to protect IoT devices from being attacked by local computers. In response to this issue, we propose a novel behavior-based deep learning framework (BDLF) which is built in cloud platform for detecting malware in IoT environment. In the proposed BDLF, we first construct behavior graphs to provide efficient information of malware behaviors using extracted API calls. We then use a neural network-Stacked AutoEncoders (SAEs) for extracting high-level features from behavior graphs. The layers of SAEs are inserted one after another and the last layer is connected to some added classifiers. The architecture of the SAEs is 6,000-2,000-500. The experiment results demonstrate that the proposed BDLF can learn the semantics of higher-level malicious behaviors from behavior graphs and further increase the average detection precision by 1.5%.
机译:物联网(物联网)提供了各种好处,使智能设备甚至更近。在IOT中使用越来越多的智能设备,安全性不是一个设备存在。在IOT环境中的传统计算机上针对的许多攻击也可能瞄准其他物联网设备。在本文中,我们考虑一种保护IOT设备被当地计算机攻击的方法。为了响应此问题,我们提出了一种基于行为的深度教育框架(BDLF),该框架(BDLF)内置于云平台,用于检测IOT环境中的恶意软件。在所提出的BDLF中,我们首先构建行为图,以提供使用提取的API调用提供恶意软件行为的有效信息。然后,我们使用神经网络堆叠的AutoEncoders(SAES)从行为图中提取高级功能。一个接一个地插入SAE层,最后一层连接到一些添加的分类器。 Saes的架构是6,000-2,000-500。实验结果表明,所提出的BDLF可以从行为图中学习更高级别的恶意行为的语义,并进一步将平均检测精度进一步提高1.5%。

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