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Malicious Software Classification Using Transfer Learning of ResNet-50 Deep Neural Network

机译:使用ResNet-50深层神经网络的转移学习进行恶意软件分类

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Malicious software (malware) has been extensively used for illegal activity and new malware variants are discovered at an alarmingly high rate. The ability to group malware variants into families with similar characteristics makes possible to create mitigation strategies that work for a whole class of programs. In this paper, we present a malware family classification approach using a deep neural network based on the ResNet-50 architecture. Malware samples are represented as byteplot grayscale images and a deep neural network is trained freezing the convolutional layers of ResNet-50 pre-trained on the ImageNet dataset and adapting the last layer to malware family classification. The experimental results on a dataset comprising 9,339 samples from 25 different families showed that our approach can effectively be used to classify malware families with an accuracy of 98.62%.
机译:恶意软件(malware)已被广泛用于非法活动,并且以惊人的速度发现了新的恶意软件变体。将恶意软件变体分组为具有类似特征的家族的能力使得可以创建适用于整个程序类别的缓解策略。在本文中,我们提出了一种基于ResNet-50架构的使用深度神经网络的恶意软件家族分类方法。恶意软件样本表示为字节图灰度图像,并且经过深度神经网络训练,冻结了ImageNet数据集上预先训练的ResNet-50卷积层,并使最后一层适应恶意软件家族分类。在包含来自25个不同家族的9,339个样本的数据集上的实验结果表明,我们的方法可以有效地用于以98.62%的准确度对恶意软件家族进行分类。

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