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Incorporating known malware signatures to classify new malware variants in network traffic

机译:合并已知的恶意软件签名以对网络流量中的新恶意软件变体进行分类

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Content-based malware classification technique using n-gram features required high computational overhead because of the size of feature space. This paper proposes the augmentation of domain knowledge in the form of known Snort malware signatures to machine learning techniques to reduce resources (in terms of the time to generate machine learning model and the memory usage to store generative model). Although current malware can be encrypted or mutated, these malware still exhibit prevalent contents or payloads as their predecessors. Using a dataset of traffic captured from a campus network, our approach is able to reduce initial generated million n-gram features to only around 90000 features, which significantly reduces processing time to generate naive Bayes model by 95%. The generated model that has been trained by the most descriptive features (4-gram Snort signatures with high information gain) produces lower false negative, about 2% compared with other models. Moreover, the proposed method is capable of detecting 10 new malware variants with 0% false negative. The findings from this paper can be the basis for improving malware classification based on content classification to detect known and new malware. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:由于特征空间的大小,使用n-gram特征的基于内容的恶意软件分类技术需要很高的计算开销。本文提出了以已知的Snort恶意软件签名的形式来增强领域知识的机器学习技术,以减少资源(就生成机器学习模型的时间和存储生成模型的内存使用而言)。尽管当前的恶意软件可以进行加密或变异,但这些恶意软件仍会像其前身一样具有普遍的内容或有效负载。通过使用从校园网络捕获的流量数据集,我们的方法能够将最初生成的数百万个n-gram特征减少到仅约90000个特征,从而将生成朴素贝叶斯模型的处理时间大大减少了95%。经过描述性最强的功能(具有高信息增益的4克Snort签名)训练的生成模型产生的假阴性率较低,与其他模型相比约为2%。此外,所提出的方法能够检测出10种误报率为0%的新恶意软件变体。本文的发现可以作为基于内容分类来检测已知和新恶意软件的改进恶意软件分类的基础。版权所有(c)2015 John Wiley&Sons,Ltd.

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