SMILER: Towards Practical Online Traffic Classification

Baohua Yang, Guangdong Hou, Lingyun Ruan, Y. Xue, Jun Li
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引用次数: 14

Abstract

Network traffic classification is extremely important in numerous network functions today. However, most of the current approaches based on port number or payload detection are becoming increasingly impractical with the appearance of dynamic or encrypted applications. Even though some supervised learning based work were proposed, it is difficult to collect sufficient flow-labeled traces for training. On the other hand, online classification needs an early identification, which is still challenging for most well-known approaches. In this paper, we propose a semi-supervised learning based traffic classification approach named SMILER, which supports an early classification from the sizes of the first few packets (empirically 5 packets) of a flow. Experiments in real networks demonstrate that SMILER achieves 94% precision and 96% recall on average for all tested applications, even with disordered packets SMILER still works well. With a hybrid scheme, the performance is further improved. Meanwhile, SMILER performs fast in both classification and updating. All experimental results show that SMILER is practical for fast and accurate online traffic classification.
smile:走向实用的在线流量分类
在当今众多的网络功能中,网络流分类是极其重要的。然而,随着动态或加密应用程序的出现,大多数基于端口号或有效负载检测的当前方法变得越来越不切实际。尽管提出了一些基于监督学习的工作,但很难收集足够的流标记痕迹用于训练。另一方面,在线分类需要早期识别,这对于大多数知名的方法来说仍然是一个挑战。在本文中,我们提出了一种名为SMILER的基于半监督学习的流量分类方法,该方法支持从流量的前几个数据包(经验为5个数据包)的大小进行早期分类。在实际网络中的实验表明,SMILER在所有测试应用中平均达到94%的准确率和96%的召回率,即使在无序数据包中,SMILER仍然可以很好地工作。采用混合方案,性能得到进一步提高。同时,SMILER在分类和更新方面都有较快的速度。实验结果表明,该算法能够实现快速、准确的在线流量分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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