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Online Malware Detection in Cloud Auto-scaling Systems Using Shallow Convolutional Neural Networks

机译:使用浅卷积神经网络云自动缩放系统的在线恶意软件检测

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This paper introduces a novel online malware detection approach in cloud by leveraging one of its unique characteristics—auto-scaling. Auto-scaling in cloud allows for maintaining an optimal number of running VMs based on load, by dynamically adding or terminating VMs. Our detection system is online because it detects malicious behavior while the system is running. Malware detection is performed by utilizing process-level performance metrics to model a Convolutional Neural Network (CNN). We initially employ a 2d CNN approach which trains on individual samples of each of the VMs in an auto-scaling scenario. That is, there is no correlation between samples from different VMs during the training phase. We enhance the detection accuracy by considering the correlations between multiple VMs through a sample pairing approach. Experiments are performed by injecting malware inside one of the VMs in an auto-scaling scenario. We show that our standard 2d CNN approach reaches an accuracy of ?90%. However, our sample pairing approach significantly improves the accuracy to ?97%.
机译:本文通过利用其独特的特点 - 自动缩放,介绍了云中的新型在线恶意软件检测方法。云中的自动缩放允许通过动态添加或终止VM来维护基于负载的最佳运行VMS的最佳数量。我们的检测系统在线,因为它在系统运行时检测到恶意行为。通过利用流程级性能度量来模拟卷积神经网络(CNN)来执行恶意软件检测。我们最初采用了2D CNN方法,该方法在自动缩放场景中列出每个VM的各个样本。也就是说,在训练阶段期间来自不同VM的样本之间没有相关性。我们通过考虑通过样本配对方法的多个VM之间的相关性来增强检测精度。通过在自动缩放场景中注入其中一个虚拟机内的恶意软件进行实验。我们表明我们的标准2D CNN方法达到了90%的准确性。但是,我们的样品配对方法显着提高了97%的准确性。

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