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首页> 外文期刊>International Journal of Network Security & Its Applications >Malware Detection Using Machine Learning Algorithms and Reverse Engineering of Android Java Code
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Malware Detection Using Machine Learning Algorithms and Reverse Engineering of Android Java Code

机译:使用机器学习算法的恶意软件检测和Android Java代码的逆向工程

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This research paper is focused on the issue of mobile application malware detection by Reverse Engineering of Android java code and use of Machine Learning algorithms. The malicious software characteristics were identified based on a collected set of total number of 1958 applications (including 996 malware applications). During research a unique set of features was chosen, then three attribute selection algorithms and five classification algorithms (Random Forest, K Nearest Neighbors, SVM, Nave Bayes and Logistic Regression) were examined to choose algorithms that would provide the most effective rate of malware detection.
机译:本研究论文的重点是Android Java代码的反向工程和机器学习算法的使用对移动应用程序恶意软件进行检测的问题。根据收集的1958个应用程序总数(包括996个恶意软件应用程序)识别恶意软件特征。在研究过程中,选择了一组独特的功能,然后检查了三种属性选择算法和五种分类算法(Random Forest,K最近邻,SVM,Nave Bayes和Logistic回归),以选择能够提供最有效恶意软件检测率的算法。

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