Android恶意软件检测使用机器学习和逆向工程

M. Kedziora, Paulina Gawin, Michał Szczepanik, I. Józwiak
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引用次数: 5

摘要

本文主要研究利用java代码的逆向工程技术对安卓移动系统进行恶意软件检测的问题。恶意软件的特征是根据收集的一组应用程序识别的。测试的1958个应用程序总数(包括996个恶意软件应用程序)。选择了一组独特的功能。为了选择最有效的恶意软件检测算法,研究了五种分类算法(随机森林、SVM、K-NN、Nave Bayes、Logistic回归)和三种属性选择算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANDROID MALWARE DETECTION USING MACHINE LEARNING AND REVERSE ENGINEERING
This paper is focused on the issue of malware detection for Android mobile system by Reverse Engineering of java code. The characteristics of malicious software were identified based on a collected set of applications. Total number of 1958 applications where tested (including 996 malware apps). A unique set of features was chosen. Five classification algorithms (Random Forest, SVM, K-NN, Nave Bayes, Logistic Regression) and three attribute selection algorithms were examined in order to choose those that would provide the most effective malware detection.
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