恶意软件分类与检测的统计方法

Vida Ghanaei, C. Iliopoulos, R. Overill
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引用次数: 5

摘要

反病毒公司每天都会收到大量的恶意软件变种;因此,有必要将它们自动分类到相应的恶意软件家族中。在这里,我们应用一种有效的统计方法来识别和呈现恶意软件家族的关键恶意模式,这是大量已知和未知恶意软件变体自动分类的基本要素。关键恶意模式是最常见的基本块,在一个特定的恶意软件家族中最常见,而在所有其他恶意软件家族中相对较少。通过计算驻留在所有恶意软件家族中的每个不同基本块的分布频率,衡量成为特定恶意软件家族的关键恶意模式的潜在代表的重要性。这个值是通过考虑每个恶意软件家族的总体,以及每个不同的基本块在不同恶意软件家族中的分布频率比来仔细计算的。结果表明,利用该方法可以有效、准确地将已知和未知的恶意软件变体分类到相关的恶意软件家族中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical approach towards malware classification and detection
Anti-virus companies receive extensive quantities of malware variants daily; therefore, it is essential to automatically classify them into their corresponding malware family. Here, we apply an efficient statistical approach to identify and render critical malicious patterns into malware families, which are essential elements of automated classification of known and unknown malware variants in large quantities. Critical malicious patterns are the most frequent basic blocks, which are present most often in one specific malware family, and comparatively less in all other malware families. By computing the distribution frequency of each distinct basic block residing in all the malware families, the importance of being a potential representative of a critical malicious pattern for a specific malware family is measured. This value is carefully computed by considering the population of each malware family, and the distribution frequency ratio of every distinct basic block among the different malware families. The results show that known and unknown malware variants can be effectively and accurately classified into their related malware family using this approach.
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