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Detection of malicious behavior in android apps through API calls and permission uses analysis

机译:通过API调用和权限使用分析检测android应用中的恶意行为

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摘要

In recent years, with the prevalence of smartphones, the number of Android malware shows explosive growth. As malicious apps may steal users' sensitive data and even money from mobile and bank accounts, it is important to detect potential malicious behaviors so as to block them. To achieve this goal, we propose a dynamic behavior inspection and analysis framework for malicious behavior detection. A customized Android system is built to record apps' API calls, permission uses, and some other runtime features. We also develop an automated app behavior inspection platform to install and inspect massive samples so as to collect apps' dynamic behavior records. Then these records are exploited to train a string subsequence kernel–based Support Vector Machine (SVM) model, which can be used to classify benign and malicious behaviors offline. To realize online detection, we further extract apps' runtime features including sensitive permission combination uses, sensitive behavior sequences, and user interactions for behavior classification. The classification results can reach an accuracy of 84.9% in offline phase and 99.0% in online phase. Besides, we verify our scheme for identifying malicious apps, and the results show that 71.8% instances of malware samples are identified by running each app for only 18 minutes.
机译:近年来,随着智能手机的普及,Android恶意软件的数量呈爆炸式增长。由于恶意应用程序可能会窃取用户的敏感数据,甚至从移动帐户和银行帐户中窃取资金,因此检测潜在的恶意行为以阻止它们很重要。为了实现此目标,我们提出了一种用于恶意行为检测的动态行为检查和分析框架。构建了定制的Android系统来记录应用程序的API调用,权限使用以及其他一些运行时功能。我们还开发了一个自动的应用程序行为检查平台,用于安装和检查大量样本,以收集应用程序的动态行为记录。然后,利用这些记录来训练基于字符串子序列内核的支持向量机(SVM)模型,该模型可用于对离线的良性和恶意行为进行分类。为了实现在线检测,我们进一步提取了应用程序的运行时功能,包括敏感权限组合使用,敏感行为序列和用户交互以进行行为分类。分类结果在离线阶段可以达到84.9%的精度,在线阶段可以达到99.0%的精度。此外,我们验证了用于识别恶意应用程序的方案,结果表明,仅运行每个应用程序18分钟,即可识别71.8%的恶意软件样本实例。

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