基于Linux内核的Android恶意软件检测特征选择

Hwan-Hee Kim, Mi-Jung Choi
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引用次数: 18

摘要

随着移动设备使用量的增加,攻击者的攻击目标已经从PC环境转向移动环境。尤其是android平台,由于其具有开放平台的特点,各种攻击层出不穷。为了解决这一问题,基于机器学习的恶意软件检测研究不断取得进展。然而,随着Android平台版本的不断更新,一些在现有研究中使用的功能无法再被收集。因此,我们提出了基于Linux内核的新特性,以检测高于android 4.0版本的恶意软件。此外,我们进行特征选择,从上述特征中选择最优特征。这种方法能够提高恶意软件检测系统的性能。在实验中,我们利用支持向量机分类器对android恶意软件进行检测,该方法在现有研究中表现出较好的性能,证明了新特征的可行性和有效性。
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Linux kernel-based feature selection for Android malware detection
As usage of mobile increased, target of attackers has changed from PC to Mobile environment. In particular, various attacks have occurred in android platform because it has feature of open platform. To solve this problem, researches of machine learning-based malware detection continually have progressed. However, as version of Android platform continuously is updated, some feature that used in existing research could not collect any more. Therefore, we propose Linux kernel-based novel feature in order to detect malware in higher than android version 4.0. In addition, we perform feature selection to select optimal feature about foregoing feature. This way is able to improve performance of malware detection system. In experiment, by performing android malware detection through support vector machine classifier which has showed relatively good performance in existing studies, we show novel feature feasibility and validity.
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