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Android Malware Classification Using XGBoost On Data Image Pattern

机译:在数据图像模式上使用XGBoost的Android恶意软件分类

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The popularity of Android smartphone has encouraged cybercriminals to develop malware targeting this platform. In the third quarter of 2018, the number of Android malware has increased by 40% when compared with the same quarter of year 2017. The traditional malware analysis techniques need to be improved where it must be able to detect new malware quickly and accurately. This paper proposed an Android malware classification by using 8-bit grayscale images where the images features will be extracted using GIST descriptor and later be classified using XGBoost machine learning algorithm. Classes.dex and its data section will be extracted from the Android APK files before they were converted into images. k-Nearest Neighbours and Random Forest machine learning algorithms will also be used to compare the accuracy performance. The experiments show classification using data section performed better than classification on full classes.dex files in all three machine learning algorithms.
机译:Android智能手机的普及鼓励网络犯罪分子开发针对该平台的恶意软件。与2017年同期相比,2018年第三季度Android恶意软件的数量增加了40%。传统的恶意软件分析技术需要改进,因为它必须能够快速,准确地检测到新的恶意软件。本文提出了一种使用8位灰度图像的Android恶意软件分类方法,其中,将使用GIST描述符提取图像特征,然后使用XGBoost机器学习算法对其进行分类。从Android APK文件中提取Classes.dex及其数据部分,然后将其转换为图像。 k最近邻和随机森林机器学习算法也将用于比较精度性能。实验表明,在所有三种机器学习算法中,使用数据部分进行分类的效果均优于对完全classes.dex文件进行分类。

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