CAEN:移动应用流量识别的深度学习方法

Ding Li, Yuefei Zhu, Wei Lin, Yan Chen
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引用次数: 1

摘要

由于移动设备和移动应用的蓬勃发展,移动应用流量现在占据了大部分。目前最先进的识别方法,如DPI和基于流的分类器,在手动设计特征和标记样本方面存在困难。由于cnn在视觉对象识别方面的卓越表现,我们提出了卷积自编码器网络(CAEN),这是一种用于移动应用流量识别的深度学习方法。我们的贡献是双重的。首先,我们提出了一种将交通流转换为视觉有意义的图像的新方法,从而使机器能够以人类的方式识别交通。基于该方法,我们创建了一个名为IMTD的开放数据集。其次,将卷积自编码器(convolutional autoencoder, CAE)算法引入到网络模型中,实现了大量无标记样本的自动特征提取和学习。实验结果表明,该方法的识别精度可达99.5%,满足实际要求。
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CAEN: A Deep Learning Approach to Mobile App Traffic Identification
Mobile app traffic now accounts for a majority owing to the booming mobile devices and mobile apps. State-of-the-art identification methods, such as DPI and flow-based classifiers, have difficulties in designing features and labeling samples manually. Motivated by the excellence of CNNs in visual object recognition, we propose convolutional autoencoder network (CAEN), a deep learning approach to mobile app traffic identification. Our contributions are two-fold. First, we propose a novel method of converting traffic flows into vision-meaningful images, and thus enable the machine to identify the traffic in a human way. Based on the method, we create an open dataset named IMTD. Second, convolutional autoencoder (CAE) algorithm is introduced into the proposed network model, realizing the automatic feature extraction and the learning from massive unlabeled samples. The experimental results show that the identification accuracy of our approach can reach 99.5%, which satisfies the practical requirement.
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