基于签名统计和端口方法的在线混合互联网流量分类算法对互联网应用进行识别

H. Ibrahim, S. Nor, Haitham A. Jamil
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引用次数: 6

摘要

互联网流量分类在过去几年中受到了极大的关注。目前大多数分类方法仅适用于离线分类。三种常用的分类方法(港口、有效载荷、统计数据)都有一些局限性。为了提高互联网流量分类器的使用价值,本文将这三种方法结合在一起,提出了一种新的分类算法(SSPC)。在该算法中,每个交通流被三种分类器中的一种并行分类三次。基于一定的优先级规则,SSPC对每个流量进行分类决策。通过对离线和在线两个阶段的WWW应用流量进行分类,对SSPC算法进行了测试。两种情况的结果表明,与其他分类器相比,SSPC具有更高的准确率。此外,结果表明,SSPC算法适用于互联网流量速度下的在线分类决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online hybrid internet traffic classification algorithm based on signature statistical and port methods to identify internet applications
Internet traffic classification gained significant attention in the last few years. Most of the current classification methods were only valid for offline classification. Each of the three common classification methods (port, payload, statistics) has some limitations. To increase the value of Internet traffic classifiers, this paper combines the three methods to produce a new classification algorithm (SSPC). In the proposed algorithm, each traffic flow was classified in parallel three times by one of the three method classifiers. Based on certain priority rules, SSPC makes classification decisions for each traffic flow. The SSPC algorithm was tested by classifying WWW applications traffic in two stages: offline and online. The results of both cases show that SSPC is the higher accuracy when compared with other classifiers. In addition, the results indicate that the SSPC algorithm was suitable for online classification decisions, which is taken with the speed of the Inter-net traffic.
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