Malware Classification Using Euclidean Distance and Artificial Neural Networks

Lilia E. Gonzalez, R. Vázquez
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引用次数: 13

Abstract

Most of the samples discovered are variations of known malicious programs and thus have similar structures, however, there is no method of malware classification that is completely effective. To address this issue, the approach proposed in this paper represents a malware in terms of a vector, in which each feature consists of the amount of APIs called from a Dynamic Link Library (DLL). To determine if this approach is useful to classify malware variants into the correct families, we employ Euclidean Distance and a Multilayer Perceptron with several learning algorithms. The experimental results are analyzed to determine which method works best with the approach. The experiments were conducted with a database that contains real samples of worms and trojans and show that is possible to classify malware variants using the number of functions imported per library. However, the accuracy varies depending on the method used for the classification.
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基于欧氏距离和人工神经网络的恶意软件分类
发现的大多数样本都是已知恶意程序的变体,因此具有相似的结构,然而,没有一种完全有效的恶意软件分类方法。为了解决这个问题,本文提出的方法用向量表示恶意软件,其中每个特征由从动态链接库(DLL)调用的api数量组成。为了确定这种方法是否有助于将恶意软件变体分类到正确的家族中,我们使用了欧几里得距离和带有几种学习算法的多层感知器。对实验结果进行了分析,以确定哪种方法最适合该方法。实验是在一个包含蠕虫和木马真实样本的数据库中进行的,并表明可以使用每个库导入的函数数量来分类恶意软件变体。然而,准确度取决于用于分类的方法。
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