Unsupervised Feature Learning for Whatsapp network Data packets using Autoencoder

S. Ramraj, G. Usha
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引用次数: 1

Abstract

Nowadays the network traffic analyses plays a important role in network management. The network management includes Quality of Service, blocking a particular service or application with in the organization network. There are two versions of network traffic analysis existing one is encrypted and other is unencrypted. Instant Message applications such as whatsapp,viber,telegram are generating encrypted network traffic. This type of traffic can be analyzed by analyzing the behavior of network packets flow. The objectives of doing such encrypted traffic analysis include Traffic Clustering, Application Type and Protocol Classification, Anomaly Detection or File Identification. This research is focused on capturing the whatsapp data packets at router level and clustering the packets. Since the packets are captured at router level they dont have any label. It is proposed to apply unsupervised Machine Learning, Deep Learning algorithm such as K Means, PCA, Autoencoder are applied for clustering the network data packets. PCA, Autoencoder are both unsupervised learning approach for dimensionality reduction. The Autoencoder along with K Means algorithm gives good results in clustering the network packets according to their file type(jpg,pdf,mp4).
使用自动编码器的Whatsapp网络数据包的无监督特征学习
当前,网络流量分析在网络管理中起着重要的作用。网络管理包括服务质量,阻止组织网络中的特定服务或应用程序。现有的网络流量分析有两种版本,一种是加密的,另一种是不加密的。诸如whatsapp、viber、telegram等即时通讯应用程序正在产生加密的网络流量。这种类型的流量可以通过分析网络数据包流的行为来分析。进行这种加密流量分析的目标包括流量聚类、应用类型和协议分类、异常检测或文件识别。本研究的重点是在路由器级别捕获whatsapp数据包并对数据包进行聚类。因为数据包是在路由器级别捕获的,所以它们没有任何标签。提出应用无监督机器学习、K Means、PCA、Autoencoder等深度学习算法对网络数据包进行聚类。PCA和Autoencoder都是无监督的降维学习方法。Autoencoder与K Means算法在根据网络数据包的文件类型(jpg,pdf,mp4)聚类方面取得了很好的效果。
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