Dynamic classification of packing algorithms for inspecting executables using entropy analysis

Munkhbayar Bat-Erdene, Taebeom Kim, Hongzhe Li, Heejo Lee
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引用次数: 14

Abstract

Packing is widely used for bypassing anti-malware systems, and the proportion of packed malware has been growing rapidly, making up over 80% of malware. Few studies on detecting packing algorithms have been conducted during last two decades. In this paper, we propose a method to classify packing algorithms of given packed executables. First, we convert entropy values of the packed executables loaded in memory into symbolic representations. Our proposed method uses SAX (Symbolic Aggregate Approximation) which is known to be good at large data conversion. Due to its advantage of simplifying complicated patterns, symbolic representation is commonly used in bio-informatics and data mining fields. Second, we classify the distribution of symbols using supervised learning classifications, i.e., Naive Bayes and Support Vector Machines. Results of our experiments with a collection of 466 programs and 15 packing algorithms demonstrated that our method can identify packing algorithms of given executables with a high accuracy of 94.2%, recall of 94.7% and precision of 92.7%. It has been confirmed that packing algorithms can be identified using entropy analysis, which is a measure of uncertainty of running executables, without a prior knowledge of the executable.
基于熵分析的可执行文件检测打包算法动态分类
封装被广泛用于绕过反恶意软件系统,封装恶意软件的比例增长迅速,占恶意软件的80%以上。近二十年来,对检测包装算法的研究很少。本文提出了一种对给定可执行文件打包算法进行分类的方法。首先,我们将加载到内存中的可执行文件的熵值转换为符号表示。我们提出的方法使用SAX(符号聚合近似),它是已知的擅长大数据转换。符号表示由于具有简化复杂模式的优点,在生物信息学和数据挖掘领域得到了广泛的应用。其次,我们使用监督学习分类,即朴素贝叶斯和支持向量机,对符号的分布进行分类。我们对466个程序和15种打包算法的实验结果表明,我们的方法可以识别给定可执行文件的打包算法,准确率为94.2%,召回率为94.7%,精密度为92.7%。已经证实,可以使用熵分析来识别打包算法,熵分析是运行可执行文件的不确定性度量,而不需要事先了解可执行文件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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