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Semi-Supervised Malware Clustering Based on the Weight of Bytecode and API

机译:基于字节码和API的重量的半监控恶意软件群集

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摘要

With the rapid advances of anti-virus and anti-tracking technologies, three aspects in malware clustering need to be improved for effective clustering, i.e., the robustness of features, the accuracy of similarity measurements, and the effectiveness of clustering algorithms. In this paper, we propose a novel malware family clustering approach based on dynamic and static features with their weights. In this approach, we employ a new similarity measurement method based on EMD to improve the accuracy of feature similarities. In addition, to reduce convergence time and improve clustering purity, we design a novel semi-supervised clustering algorithm, termed as S-DBSCAN by involving supervision information into the original algorithm known as Density-Based Spatial Clustering of Applications with Noise (DBSCAN). The experimental results demonstrate that the proposed approach can correctly and accurately distinguish the samples among various families and achieve outperformed purity with 98.7.
机译:随着防病毒和反跟踪技术的快速进步,需要改善恶意软件聚类的三个方面,以便有效聚类,即特征的鲁棒性,相似性测量的准确性以及聚类算法的有效性。在本文中,我们提出了一种基于动态和静态特征的新型恶意软件系列方法,其权重。在这种方法中,我们使用基于EMD的新的相似性测量方法来提高特征相似度的准确性。另外,为了减少收敛时间并提高聚类纯度,我们设计一种新颖的半监督聚类算法,通过涉及监督信息被称为S-DBSCAN称为具有噪声(DBSCAN)的基于密度的空间聚类的原始算法称为S-DBSCAN。实验结果表明,所提出的方法可以正确准确地区分各个家庭之间的样品,并以98.7达到表现优于纯度。

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