基于应用的网络流量数据集与SPID分析

Murat Karayaka, Arda Bayer, Semih Balki, E. Anarim, M. Koca
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引用次数: 0

摘要

目前,基于web的应用程序已经成为我们日常生活的一部分。这些应用程序的快速发展已经在各个部门得到了应用,这使得各自的安全系统有必要快速适应,以便识别这些应用程序。本文收集了一些最新的、常用的应用程序的网络流量数据,以供研究人员使用。此外,还使用基于统计协议识别的特征对这些数据进行了有关该问题的分析。研究表明,对于流量分类,使用这些特征训练随机森林分类器比使用这些特征在之前的工作中使用的平均KL散度更有效。
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Application Based Network Traffic Dataset and SPID Analysis
Currently, web-based applications have become a part of every piece of our daily lives. The rapid advancements in these applications which have found its use in variety of sectors has made it necessary for the respective security systems to adapt as fast in order to identify these applications. In this work, some up-to-date and commonly used applications’ web traffic data have been collected for network traffic classification problem and they are presented for the use of researchers. In addition, an analysis of these data with respect to this problem is performed using features based on statistical protocol identification. It has been shown that for the traffic classification, training a Random Forest classifier with these features is more effective than using the mean KL divergence which was used in previous work with these features.
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