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Discovering New Malware Families Using a Linguistic-Based Macros Detection Method

机译:使用基于语言的宏检测方法发现新的恶意软件系列

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In recent years, the number of targeted email attacks using malicious macros has been increasing. Malicious macros are malware which is written in Visual Basic for Application. Since much source code of malicious macros is highly obfuscated, the source code contains many obfuscated words such as random numbers or strings. Today, new malware families are frequently discovered. To detect unseen malicious macros, previous work proposed a method using natural language techniques. The proposed method separates macro's source code into words, and detects malicious macros based on the appearance frequency. This method could detect unseen malicious macros. However, the unseen malicious macros might consist of known malware families. Furthermore, the mechanism and effectiveness of this method are not clear. In particular, detecting new malware families is a top priority. Hence, this paper reveals the mechanism and effectiveness of this method to detect new malware families. Our experiment shows that using only malicious macros for feature extraction and consolidating obfuscated words into a word were effective. We confirmed this method could discover 89% of new malware families.
机译:近年来,使用恶意宏的有针对性的电子邮件攻击的数量正在增加。恶意宏是以Visual Basic为应用程序编写的恶意软件。由于恶意宏的许多源代码高度混淆,因此源代码包含许多混淆的单词,例如随机数或字符串。今天,经常发现新的恶意软件系列。为了检测看不见的恶意宏,之前的工作提出了一种使用自然语言技术的方法。该方法将宏的源代码分离为单词,并根据外观频率检测恶意宏。此方法可以检测看不见的恶意宏。但是,看不见的恶意宏可能包括已知的恶意软件系列。此外,该方法的机制和有效性尚不清楚。特别是,检测到新的恶意软件系列是一个首要任务。因此,本文揭示了这种方法检测新恶意软件系列的机制和有效性。我们的实验表明,仅使用恶意宏进行特征提取并将混淆的单词巩固到一个单词中是有效的。我们确认此方法可能会发现89%的新恶意软件系列。

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