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Incorporating Android Code Smells into Java Static Code Metrics for Security Risk Prediction of Android Applications

机译:将Android Code闻到Java静态代码度量标准,用于Android应用程序的安全风险预测

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With the wide-spread use of Android applications in people’s daily life, it becomes more and more important to timely identify the security problems of these applications. To enrich existing studies in guarding the security and privacy of Android applications, we attempted to predict the security risk levels of Android applications. Specifically, we proposed an approach that incorporated Android code smells into traditional Java code metrics to predict how secure an Android application is. With an evaluation of our technique on 3,680 Android applications, we found that: (1) Android code smells could help improve the performance of security risk prediction of Android applications; (2) By building a Random Forest model based on Android code smells and Java code metrics, we could achieve an Area Under Curve (AUC) of 0.97; (3) Android code smells such as member ignoring method (MIM) and leaking inner class (LIC) have a relatively-large influence on Android security risk prediction, to which developers should pay more attention during their application development.
机译:随着Android应用在人们日常生活中的广泛应用,它变得越来越重要,及时识别这些应用程序的安全问题。为了丰富现有的研究来保护Android应用程序的安全性和隐私,我们试图预测Android应用程序的安全风险级别。具体而言,我们提出了一种将Android代码闻到传统的Java代码度量的方法,以预测Android应用程序的安全。通过对3,680个Android应用程序的技术进行评估,我们发现:(1)Android代码气味可以帮助提高Android应用程序安全风险预测的性能; (2)通过基于Android Code Smells和Java代码指标构建一个随机林模型,我们可以实现0.97的曲线(AUC)的区域; (3)Android代码诸如成员忽略方法(MIM)和泄漏内部类(LIM)的闻名对Android安全风险预测的影响相对较大,开发人员在其应用程序开发期间应该更加关注。

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