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Mobile Botnet Detection: A Deep Learning Approach Using Convolutional Neural Networks

机译:移动僵尸网络检测:使用卷积神经网络的深度学习方法

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Android, being the most widespread mobile operating systems is increasingly becoming a target for malware. Malicious apps designed to turn mobile devices into bots that may form part of a larger botnet have become quite common, thus posing a serious threat. This calls for more effective methods to detect botnets on the Android platform. Hence, in this paper, we present a deep learning approach for Android botnet detection based on Convolutional Neural Networks (CNN). Our proposed botnet detection system is implemented as a CNN-based model that is trained on 342 static app features to distinguish between botnet apps and normal apps. The trained botnet detection model was evaluated on a set of 6,802 real applications containing 1,929 botnets from the publicly available ISCX botnet dataset. The results show that our CNN-based approach had the highest overall prediction accuracy compared to other popular machine learning classifiers. Furthermore, the performance results observed from our model were better than those reported in previous studies on machine learning based Android botnet detection.
机译:Android作为最广泛的移动操作系统,正日益成为恶意软件的攻击目标。旨在将移动设备转变为可能构成更大僵尸网络一部分的僵尸程序的恶意应用程序已经非常普遍,从而构成了严重的威胁。这就需要更有效的方法来检测Android平台上的僵尸网络。因此,在本文中,我们提出了一种基于卷积神经网络(CNN)的Android僵尸网络检测的深度学习方法。我们提出的僵尸网络检测系统被实现为基于CNN的模型,该模型在342个静态应用程序功能上进行了训练,以区分僵尸网络应用程序和常规应用程序。在一组6,802个实际应用程序上评估了训练有素的僵尸网络检测模型,该应用程序包含来自公开可用的ISCX僵尸网络数据集中的1,929个僵尸网络。结果表明,与其他流行的机器学习分类器相比,我们的基于CNN的方法具有最高的整体预测精度。此外,从我们的模型中观察到的性能结果要优于先前有关基于机器学习的Android僵尸网络检测的研究报告的结果。

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