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Towards predictive analysis of android vulnerability using statistical codes and machine learning for IoT applications

机译:使用统计代码和机器学习对IoT应用程序进行android漏洞的预测分析

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摘要

Recently, the Internet of Things (IoT) technology is used for several applications for exchanging information among various devices. The intelligent IoT based system utilizes an Android operating system because it is also primarily used in mobile devices. One of the main problems for different IoT applications is associated with android vulnerability is its complicated and large size. To overcome the main issue of IoT, the existing studies have proposed several effective prediction models using machine learning algorithms and software metrics. In this paper, we are focused on conducting android vulnerability prediction analysis using machine learning for intelligent IoT applications. We conducted an empirical investigation for examining security risk prediction of 1406 Android applications with varying levels of risk using a metric set of 21 static code metrics and 6 machine learning (ML) techniques. It is observed from results that ML algorithms have different performances for predicting security risks. RF algorithm performs better for Android applications of all risk levels. By analyzing the findings of the conducted empirical study, it is suggested that developers may consider object-oriented metrics and RF algorithm in the software development process for android based intelligent IoT systems.
机译:近年来,物联网(IoT)技术用于多种应用程序,用于在各种设备之间交换信息。基于智能IoT的系统使用Android操作系统,因为它也主要用于移动设备中。与Android漏洞相关的不同物联网应用程序的主要问题之一是其复杂且庞大。为了克服物联网的主要问题,现有研究提出了一些使用机器学习算法和软件指标的有效预测模型。在本文中,我们专注于使用机器学习对智能物联网应用程序进行android漏洞预测分析。我们进行了一项实证研究,使用一套21个静态代码指标和6种机器学习(ML)技术的指标集,检查了具有不同风险级别的1406个Android应用程序的安全风险预测。从结果可以看出,ML算法在预测安全风险方面具有不同的性能。对于所有风险级别的Android应用,RF算法的性能都更好。通过分析进行的实证研究的结果,建议开发人员可以在基于Android的智能IoT系统的软件开发过程中考虑面向对象的指标和RF算法。

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