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Android Malware Familial Classification Based on DEX File Section Features

机译:基于DEX文件部分的Android恶意软件系列分类

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摘要

The rapid proliferation of Android malware is challenging the classification of the Android malware family. The traditional static method for classification is easily affected by the confusion and reinforcement, while the dynamic method is expensive in computation. To solve these problems, this paper proposes an Android malware familial classification method based on Dalvik Executable (DEX) file section features. First, the DEX file is converted into RGB (Red/Green/Blue) image and plain text respectively, and then, the color and texture of image and text are extracted as features. Finally, a feature fusion algorithm based on multiple kernel learning is used for classification. In this experiment, the Android Malware Dataset (AMD) was selected as the sample set. Two different comparative experiments were set up, and the method in this paper was compared with the common visualization method and feature fusion method. The results show that our method has a better classification effect with precision, recall and F1 score reaching 0.96. Besides, the time of feature extraction in this paper is reduced by 2.999 seconds compared with the method of frequent subsequence. In conclusion, the method proposed in this paper is efficient and precise in the classification of the Android malware family.
机译:Android Malware的快速增殖挑战了Android恶意软件系列的分类。传统的分类静态方法容易受到混乱和加固的影响,而动态方法在计算中昂贵。为解决这些问题,本文提出了一种基于DALVIK可执行文件(DEX)文件部分功能的Android恶意软件系列分类方法。首先,DEX文件分别转换为RGB(红色/绿色/蓝色)图像和纯文本,然后将图像和文本的颜色和纹理作为特征提取。最后,使用基于多个内核学习的特征融合算法进行分类。在此实验中,选择了Android Malware数据集(AMD)作为示例集。建立了两种不同的比较实验,并将本文的方法与常见的可视化方法进行比较,特征融合方法进行比较。结果表明,我们的方法具有更好的分类效果,精确,召回和F1分数达到0.96。此外,与频繁随后的方法相比,本文的特征提取时间减少了2.999秒。总之,本文提出的方法在Android恶意软件家庭的分类中有效且精确。

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