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AMalNet: A deep learning framework based on graph convolutional networks for malware detection

机译:Amalnet:基于图形卷积网络的恶意软件检测的深度学习框架

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摘要

The increasing popularity of Android apps attracted widespread attention from malware authors. Traditional malware detection systems suffer from some shortcomings; computationally expensive, insufficient performance or not robust enough. To address this challenge, we (1) build a novel and highly reliable deep learning framework, named AMalNet, to learn multiple embedding representations for Android malware detection and family attribution, (2) introduce a version of Graph Convolutional Networks (GCNs) for modeling high-level graphical semantics, which automatically identifies and learns the semantic and sequential patterns, (3) use an Independently Recurrent Neural Network (IndRNN) to decode the deep semantic information, making full use of remote dependent information between nodes to independently extract features. The experimental results on multiple benchmark datasets indicated that the AMalNet framework outperforms other state-of-the-art techniques significantly.
机译:Android应用程序的越来越越来越受到恶意软件作者的广泛关注。传统恶意软件检测系统遭受一些缺点;计算地昂贵,性能不足或不够强大。为了解决这一挑战,我们(1)建立一个名为Amalnet的新颖且高度可靠的深度学习框架,以了解用于Android恶意软件检测和家庭归属的多个嵌入表示,(2)介绍了用于建模的图形卷积网络(GCN)的版本高级图形语义,它自动识别和学习语义和顺序模式,(3)使用独立复制的神经网络(INDRNN)来解码深度语义信息,充分利用节点之间的远程相关信息来独立提取特征。多个基准数据集的实验结果表明,Amalnet框架显着优于其他最先进的技术。

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