Malware Detection and Classification Based on Parallel Sequence Comparison

Hao Ding, Wenjie Sun, Yihang Chen, Bing-lin Zhao, Hairen Gui
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引用次数: 1

Abstract

The traditional signature-based malware detection technology, which restricted by the updating frequency of the feature dataset, that cannot identify the new malware sample quickly. Malware from same type or same family usually have similar behaviors. Therefore, by comparing the similarity between the sequences represented by the function call sequence, which is less affected by the update frequency of the feature dataset. However, in face of a large number of malicious code samples to be detected, the size of the sequences extracted from the samples increases exponentially, which cannot guarantee the real-time detection of malware. In order to ensure the real time of malicious code detection, a parallel method based malicious code sequence comparison model is proposed in this paper. It includes two levels of parallelism, representing parallelism of different granularity, which effectively improves the efficiency of malicious code detection and recognition. The evaluation shows that our method has high effectiveness and efficiency with the large-scale data sets.
基于并行序列比较的恶意软件检测与分类
传统的基于特征集的恶意软件检测技术受特征集更新频率的限制,无法快速识别新的恶意软件样本。同一类型或同一家族的恶意软件通常具有相似的行为。因此,通过比较函数调用序列所代表的序列之间的相似性,受特征数据集更新频率的影响较小。然而,面对大量待检测的恶意代码样本,从样本中提取的序列长度呈指数级增长,无法保证对恶意软件的实时检测。为了保证恶意代码检测的实时性,本文提出了一种基于并行方法的恶意代码序列比较模型。它包括两级并行度,代表不同粒度的并行度,有效提高了恶意代码检测和识别的效率。实验结果表明,该方法在处理大规模数据集时具有较高的有效性和效率。
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