Behaviour-aware Malware Classification: Dynamic Feature Selection

Vu Dinh Phai, Nathan Shone, Phan Huy Dung, Qi Shi, N. V. Hung, Nguyen Ngoc Tran
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引用次数: 5

Abstract

Despite the continued advancements in security research, malware persists as being a major threat in this digital age. Malware detection is a primary defence strategy for most networks but the identification of malware strains is becoming increasingly difficult. Reliable identification is based upon characteristic features being detectable within an object. However, the limitations and expense of current malware feature extraction methods is significantly hindering this process. In this paper, we present a new method for identifying malware based on behavioural feature extraction. Our proposed method has been evaluated using seven classification methods whilst analysing 2,068 malware samples from eight different families. The results achieved thus far have demonstrated promising improvements over existing approaches.
行为感知恶意软件分类:动态特征选择
尽管安全研究不断进步,恶意软件仍然是这个数字时代的主要威胁。恶意软件检测是大多数网络的主要防御策略,但恶意软件的识别变得越来越困难。可靠的识别是基于在物体内部可以检测到的特征特征。然而,当前恶意软件特征提取方法的局限性和成本极大地阻碍了这一进程。本文提出了一种基于行为特征提取的恶意软件识别方法。我们提出的方法已经使用7种分类方法进行了评估,同时分析了来自8个不同家族的2068个恶意软件样本。迄今取得的成果表明,与现有方法相比,有希望得到改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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