面向集群的集成分类器,用于智能恶意软件检测

Shifu Hou, Lifei Chen, E. Tas, Igor Demihovskiy, Yanfang Ye
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引用次数: 12

摘要

随着恶意软件的爆炸式增长,加之其对计算机安全的危害,恶意软件检测成为网络安全领域备受关注的课题之一。在应用数据挖掘技术开发智能恶意软件检测系统方面进行了大量的研究工作。这些技术在聚类或分类特定的恶意软件样本集方面取得了成功,但它们也有局限性,有很大的改进空间。具体而言,现有的研究基于对从文件样本中提取的文件内容的分析,只采用了特定的聚类或分类方法,而没有将它们整合在一起。实际上,在重叠的类模式之间学习用于恶意软件检测的类边界是一个难题。本文在分析从文件样本中提取的Windows应用程序编程接口(API)调用的基础上,开发了基于面向聚类的集成分类器的恶意软件智能检测系统。据我们所知,这是第一次将这种方法应用于恶意软件检测。通过对科摩多云安全中心收集的大量真实数据进行综合实验研究,比较了各种恶意软件检测方法。有希望的实验结果表明,我们提出的方法的准确性和效率优于其他基于数据挖掘的替代检测技术。
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Cluster-oriented ensemble classifiers for intelligent malware detection
With explosive growth of malware and due to its damage to computer security, malware detection is one of the cyber security topics that are of great interests. Many research efforts have been conducted on developing intelligent malware detection systems applying data mining techniques. Such techniques have successes in clustering or classifying particular sets of malware samples, but they have limitations that leave a large room for improvement. Specifically, based on the analysis of the file contents extracted from the file samples, existing researches apply only specific clustering or classification methods, but not integrate them together. Actually, the learning of class boundaries for malware detection between overlapping class patterns is a difficult problem. In this paper, resting on the analysis of Windows Application Programming Interface (API) calls extracted from the file samples, we develop the intelligent malware detection system using cluster-oriented ensemble classifiers. To the best of our knowledge, this is the first work of applying such method for malware detection. A comprehensive experimental study on a real and large data collection from Comodo Cloud Security Center is performed to compare various malware detection approaches. Promising experimental results demonstrate that the accuracy and efficiency of our proposed method outperform other alternate data mining based detection techniques.
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