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Comparison of Machine Learning Methods for Android Malicious Software Classification based on System Call

机译:基于系统呼叫的Android恶意软件分类机器学习方法的比较

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The development of the Android operating system is very rapid accompanied by the development of various types of malicious software (malware). The malware application can enter automatically into an Android device in an unintentional way by Android smartphone users so that there are many cases of data theft that are very detrimental to the user. In this study, malware detection will be based on the system call feature on Android using several machine learning methods, namely Support Vector Machine (SVM), Na?ve Bayes, Decision Tree, Random Forest, Log Regression, and K-nearest Neighbor (KNN). The purpose of this study is to find out the machine learning method that can provide the best value of accuracy, TPR, and FPR in resolving the problem of malware detection on android by classification of types of malware using a system call on Android. Based on the results of this study, it can be seen that the Random Forest (RF) method can classify malware in an android system by conducting early detection that produces an accuracy value of 76%, Random Forest has proven to have reliable performance in case of classification and also has advantages such as fast computation time and high accuracy also proved to be better than other machine learning methods, namely SVM, Na?ve Bayes, Decision Tree, Log Regression, and K-nearest Neighbor (KNN), which each produced an accuracy value of 71.67%, 66.83%, 69.33%, 70.83% and 71.67%.
机译:Android操作系统的开发非常迅速伴随着各种类型的恶意软件(恶意软件)的开发。恶意软件应用程序可以通过Android智能手机用户以无意的方式自动进入Android设备,以便有许多数据被盗的情况对用户非常有害。在本研究中,恶意软件检测将基于Android上的系统呼叫功能使用多种机器学习方法,即支持向量机(SVM),Na of贝父,决策树,随机林,日志回归和k最近邻( knn)。本研究的目的是找出机器学习方法,可以通过使用系统呼叫在Android上的分类来解决Android的恶意软件检测问题来提供最佳的准确度,TPR和FPR。基于本研究的结果,可以看出随机森林(RF)方法可以通过进行早期检测来对Android系统进行分类恶意软件,这些检测产生76%的精度,随机森林已被证明可以具有可靠的性能分类,并且还具有快速计算时间和高精度等优点也被证明比其他机器学习方法更好,即SVM,Na·ve贝叶斯,决策树,日志回归和k最近邻(knn),每个精度值71.67%,66.83%,69.3%,70.83%和71.67%。

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