基于MOEA的互联网流量分类和基于集合投票的在线细化方法

M. S. Aliakbarian, A. Fanian
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引用次数: 3

摘要

网络流量分类是网络管理中的一个重要问题。到目前为止,为此提出了许多方法,但研究表明,与其他方法相比,基于机器学习的算法具有良好的性能。选择最佳特征子集可以提高机器学习算法的准确性和效率。为了获得更高的分类精度,本文采用多目标进化算法选择有效特征。在该进化算法中,特征数最少、分类精度最大、真阳性率最大(TPR)和假阳性率最小(FPR)四个目标同时得到满足,且互不冲突。在该方法中,选择的特征子集在训练和测试阶段被给予一个新的集成算法,并进行在线改进。每一种新集成算法的最终结果都是由多数人对任意投票人的准确率进行投票得出的。结果表明,该方法与其他方法相比具有较高的效率和性能。使WWW流量分类准确率提升到99.93%。对P2P等其他8种流量的分析结果表明,该方法具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Internet traffic classification using MOEA and online refinement in voting on ensemble methods
Internet Traffic Classification is one of the most important issues in network management. Until now, many methods have been proposed to this end, but studies show that machine learning based algorithms have a good performance in comparison to other methods. Selecting the best feature subset causes better accuracy and efficiency in machine learning algorithms. In this paper, in order to obtain higher classification accuracy, effective features are selected using a multi-objective evolutionary algorithm. In this evolutionary algorithm, some objectives such as minimizing feature number, maximizing classification accuracy, maximizing true positive rate (maximizing TPR), and minimizing false positive rate (minimizing FPR) are satisfied simultaneously and with no conflicts with each other. In the proposed method, selected features subset is given to a new ensemble algorithm with online refinement during training and testing phases. Final result of each new ensemble algorithm is obtained by the vote of the majority with respect to the accuracy of any voter. Results show the high efficiency and performance of proposed method in comparison with other methods. So that the WWW traffic classification accuracy ascend to 99.93%. The results for 8 other traffics such as P2P indicate high accuracy of the proposed method.
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