Malware detection: program run length against detection rate

Philip O'Kane, S. Sezer, K. Mclaughlin, E. Im
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引用次数: 16

Abstract

N-gram analysis is an approach that investigates the structure of a program using bytes, characters or text strings. This research uses dynamic analysis to investigate malware detection using a classification approach based on N-gram analysis. A key issue with dynamic analysis is the length of time a program has to be run to ensure a correct classification. The motivation for this research is to find the optimum subset of operational codes (opcodes) that make the best indicators of malware and to determine how long a program has to be monitored to ensure an accurate support vector machine (SVM) classification of benign and malicious software. The experiments within this study represent programs as opcode density histograms gained through dynamic analysis for different program run periods. A SVM is used as the program classifier to determine the ability of different program run lengths to correctly determine the presence of malicious software. The findings show that malware can be detected with different program run lengths using a small number of opcodes.
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恶意软件检测:程序运行长度对检测率
N-gram分析是一种使用字节、字符或文本字符串来研究程序结构的方法。本研究使用动态分析来研究恶意软件检测,使用基于N-gram分析的分类方法。动态分析的一个关键问题是必须运行程序以确保正确分类的时间长度。这项研究的动机是找到最佳的操作码(操作码)子集,使恶意软件的最佳指标,并确定多长时间的程序必须监控,以确保良性和恶意软件的准确支持向量机(SVM)分类。本研究中的实验将程序表示为通过动态分析获得的不同程序运行周期的操作码密度直方图。使用支持向量机作为程序分类器来确定不同程序运行长度正确判断恶意软件存在的能力。研究结果表明,恶意软件可以通过使用少量操作码来检测不同的程序运行长度。
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