The plethora of Internet of Things (IoT) devices leads to explosive network traffic. The network traffic classification (NTC) is an essential tool to explore behaviours of network flows, and NTC is required for Internet service providers (ISPs) to manage the performance of the IoT network. We propose a novel network data representation, treating the traffic data as a series of images. Thus, the network data is realized as a video stream to employ time-distributed (TD) feature learning. The intra-temporal information within the network statistical data is learned using convolutional neural networks (CNN) and long short-term memory (LSTM), and the inter pseudo-temporal feature among the flows is learned by TD multi-layer perceptron (MLP). We conduct experiments using a large data-set with more number of classes. The experimental result shows that the TD feature learning elevates the network classification performance by 10%.
翻译:网络交通分类(NTC)是探索网络流动行为的基本工具,互联网服务提供商需要NTC来管理IOT网络的性能。我们提出一个新的网络数据表述方式,将流量数据作为一系列图像处理。因此,网络数据作为视频流实现,以便利用时间分配(TD)特征学习。网络内部时际统计数据是利用动态神经网络和长期短期内存(LSTM)学习的,流动中的假时性特征是TD多层渗透器(MLP)所学的。我们使用大量多类数据集进行实验。实验结果显示,TD特征学习将网络分类性能提升10%。