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Machine learning-assisted signature and heuristic-based detection of malwares in Android devices

机译:机器学习辅助签名和基于启发式的Android设备中的恶魔检测

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摘要

Malware detection is an important factor in the security of the smart devices. However, currently utilized signature-based methods cannot provide accurate detection of zero-day attacks and polymorphic viruses. In this context, an efficient hybrid framework is presented for detection of malware in Android Apps. The proposed framework considers both signature and heuristic-based analysis for Android Apps. We have reverse engineered the Android Apps to extract manifest files, and binaries, and employed state-of-the-art machine learning algorithms to efficiently detect malwares. For this purpose, a rigorous set of experiments are performed using various classifiers such as SVM, Decision Tree, W-J48 and KNN. It has been observed that SVM in case of binaries and KNN in case of manifest.xml files are the most suitable options in robustly detecting the malware in Android devices. The proposed framework is tested on benchmark datasets and results show improved accuracy in malware detection. (C) 2017 Elsevier Ltd. All rights reserved.
机译:恶意软件检测是智能设备安全性的重要因素。然而,目前使用的基于签名的方法不能提供准确地检测零天攻击和多态病毒。在此上下文中,提出了一种有效的混合框架,用于检测Android应用程序中的恶意软件。建议的框架考虑了Android应用程序的签名和启发式分析。我们有反向设计的Android应用程序以提取清单文件和二进制文件,并采用最先进的机器学习算法,以有效地检测恶意。为此目的,使用诸如SVM,决策树,W-J48和KNN等各种分类器进行严格的一组实验。已经观察到,在Manifest.xml文件的情况下,在二进制文件和knn的情况下是最适合在Android设备中的恶意软件中的最合适的选项。建议的框架在基准数据集中测试,结果显示了更高的恶意软件检测精度。 (c)2017 Elsevier Ltd.保留所有权利。

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