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FSDroid:- A feature selection technique to detect malware from Android using Machine Learning Techniques

机译:FSDROID: - 使用机器学习技术检测来自Android的恶意软件的特征选择技术

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With the recognition of free apps, Android has become the most widely used smartphone operating system these days and it naturally invited cyber-criminals to build malware-infected apps that can steal vital information from these devices. The most critical problem is to detect malware-infected apps and keep them out of Google play store. The vulnerability lies in the underlying permission model of Android apps. Consequently, it has become the responsibility of the app developers to precisely specify the permissions which are going to be demanded by the apps during their installation and execution time. In this study, we examine the permission-induced risk which begins by giving unnecessary permissions to these Android apps. The experimental work done in this research paper includes the development of an effective malware detection system which helps to determine and investigate the detective influence of numerous well-known and broadly used set of features for malware detection. To select best features from our collected features data set we implement ten distinct feature selection approaches. Further, we developed the malware detection model by utilizing LSSVM (Least Square Support Vector Machine) learning approach connected through three distinct kernel functions i.e., linear, radial basis and polynomial. Experiments were performed by using 2,00,000 distinct Android apps. Empirical result reveals that the model build by utilizing LSSVM with RBF (i.e., radial basis kernel function) named as FSdroid is able to detect 98.8% of malware when compared to distinct anti-virus scanners and also achieved 3% higher detection rate when compared to different frameworks or approaches proposed in the literature.
机译:随着认识的免费应用程序,Android已经成为使用最广泛的智能手机操作系统,这些天,这自然邀请了网络罪犯打造恶意软件感染的应用程序,可以窃取这些设备的重要信息。最关键的问题是检测恶意软件感染的应用程序,并将它们留出Google Play商店。该漏洞位于Android应用程序的基础许可模型中。因此,它已成为App开发人员的责任,精确指定应用程序在安装和执行时间内将要满足的权限。在这项研究中,我们研究了允许诱导的风险,这是通过对这些Android应用程序提供不必要的权限来开始的。本研究论文中所做的实验工作包括开发有效的恶意软件检测系统,有助于确定和研究许多众所周知和广泛使用的特征对恶意软件检测的侦探影响。要从我们的收集功能中选择最佳功能数据集,我们实现了十种不同的特征选择方法。此外,我们通过利用通过三个不同的内核功能连接的LSSVM(最小方形支持向量机)学习方法来开发恶意软件检测模型,即线性,径向基础和多项式。通过使用2,00,000个不同的Android应用程序进行实验。经验结果表明,通过使用RBF(即径向基核函数)的LSSVM命名为FSDROID的模型构建能够检测与不同的防病毒扫描仪相比的98.8%的恶意软件,并且在与之相比时也实现了3%的检测率。文献中提出的不同框架或方法。

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