Deep Learning Framework and Visualization for Malware Classification

A. S, S. K, P. Poornachandran, V. Menon, S. P.
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引用次数: 21

Abstract

In this paper we propose a deep learning framework for classification of malware. There has been an enormous increase in the volume of malware generated lately which represents a genuine security danger to organizations and people. So as to battle the expansion of malwares, new strategies are needed to quickly identify and classify malware. Malimg dataset, a publicly available benchmark data set was used for the experimentation. The architecture used in this work is a hybrid cost-sensitive network of one-dimensional Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) network which obtained an accuracy of 94.4%, an increase in performance compared to work done by [1] which got 84.9%. Hyper parameter tuning is done on deep learning architecture to set the parameters. A learning rate of 0.01 was taken for all experiments. Train-test split of 70-30% was done during experimentation. This facilitates to find how well the models perform on imbalanced data sets. Usual methods like disassembly, decompiling, de-obfuscation or execution of the binary need not be done in this proposed method. The source code and the trained models are made publicly available for further research.
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恶意软件分类的深度学习框架和可视化
本文提出了一种用于恶意软件分类的深度学习框架。最近产生的恶意软件数量急剧增加,这对组织和个人构成了真正的安全威胁。为了对抗恶意软件的扩张,需要新的策略来快速识别和分类恶意软件。实验使用了一个公开可用的基准数据集Malimg dataset。本文使用的架构是一维卷积神经网络(CNN)和长短期记忆(LSTM)网络的混合代价敏感网络,准确率达到94.4%,比[1]的84.9%提高了性能。超参数调优是在深度学习架构上进行参数设置的。所有实验的学习率均为0.01。实验时采用70-30%的训练-测试分割。这有助于发现模型在不平衡数据集上的表现。通常的方法,如反汇编、反编译、反混淆或执行二进制文件不需要在这个建议的方法中完成。源代码和经过训练的模型都是公开的,供进一步研究使用。
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