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HEMD: a highly efficient random forest-based malware detection framework for Android

机译:HEMD:Android的高效随机林的恶意软件检测框架

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摘要

Mobile phones are rapidly becoming the most widespread and popular form of communication; thus, they are also the most important attack target of malware. The amount of malware in mobile phones is increasing exponentially and poses a serious security threat. Google's Android is the most popular smart phone platforms in the world and the mechanisms of permission declaration access control cannot identify the malware. In this paper, we proposed an ensemble machine learning system for the detection of malware on Android devices. More specifically, four groups of features including permissions, monitoring system events, sensitive API and permission rate are extracted to characterize each Android application (app). Then an ensemble random forest classifier is learned to detect whether an app is potentially malicious or not. The performance of our proposed method is evaluated on the actual data set using tenfold cross-validation. The experimental results demonstrate that the proposed method can achieve a highly accuracy of 89.91%. For further assessing the performance of our method, we compared it with the state-of-the-art support vector machine classifier. Comparison results demonstrate that the proposed method is extremely promising and could provide a cost-effective alternative for Android malware detection.
机译:移动电话正在迅速成为最广泛和最受欢迎的沟通方式;因此,它们也是恶意软件最重要的攻击目标。移动电话中的恶意软件的数量正在呈指数增长并提出严重的安全威胁。 Google的Android是世界上最受欢迎的智能手机平台,权限声明访问控制机制无法识别恶意软件。在本文中,我们提出了一个用于在Android设备上检测恶意软件的集合机器学习系统。更具体地,提取包括权限,监视系统事件,敏感API和权限和权限的四组特征,以表征每个Android应用程序(应用程序)。然后学习一个集合随机林分类器来检测应用程序是否可能恶意。在使用十倍交叉验证的实际数据集上评估我们提出的方法的性能。实验结果表明,该方法可以达到89.91%的高精度。为了进一步评估我们的方法的性能,我们将其与最先进的支持向量机分类器进行比较。比较结果表明,所提出的方法非常有前途,可以为Android恶意软件检测提供经济效益的替代方案。

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