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Permission-based Android Malware Detection System Using Feature Selection with Genetic Algorithm

机译:基于特征选择和遗传算法的基于权限的Android恶意软件检测系统

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摘要

As the use of smartphones increases, Android, as a Linux-based open source mobile operating system (OS), has become the most popular mobile OS in time. Due to the widespread use of Android, malware developers mostly target Android devices and users. Malware detection systems to be developed for Android devices are important for this reason. Machine learning methods are being increasingly used for detection and analysis of Android malware. This study presents a method for detecting Android malware using feature selection with genetic algorithm (GA). Three different classifier methods with different feature subsets that were selected using GA were implemented for detecting and analyzing Android malware comparatively. A combination of Support Vector Machines and a GA yielded the best accuracy result of 98.45% with the 16 selected permissions using the dataset of 1740 samples consisting of 1119 malwares and 621 benign samples.
机译:随着智能手机的使用增加,Android作为基于Linux的开源移动操作系统(OS),已成为当今最流行的移动OS。由于Android的广泛使用,恶意软件开发人员大多以Android设备和用户为目标。因此,针对Android设备开发的恶意软件检测系统非常重要。机器学习方法正越来越多地用于检测和分析Android恶意软件。这项研究提出了一种使用特征选择和遗传算法(GA)来检测Android恶意软件的方法。使用GA选择了三种具有不同特征子集的不同分类器方法,以比较地检测和分析Android恶意软件。支持向量机和GA的组合使用由1119个恶意软件和621个良性样本组成的1740个样本的数据集,具有16个选定的权限,产生了98.45%的最佳准确性结果。

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