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A traffic classification approach based on characteristics of subflows and ensemble learning

机译:基于子流特征和集成学习的流量分类方法

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Recently, network traffic classification has attracted a great deal of attention among researchers. In this paper, we proposed a traffic classification approach based on characteristics of subflows and ensemble learning. Aiming at neutralization of unstable network environment as well as taking advantage of ensemble learning, we divided the traffic flows into different subflows in order to reduce the affection of time. Moreover, we develop truncation method on flows for real-time processing and an aggregation machine learning method based on accuracy of each classifier to different applications. Finally, the experimental results based on actual traffic traces collected from the campus network of Xian Jiaotong University verify the effectiveness of our methods.
机译:近年来,网络流量分类引起了研究人员的广泛关注。在本文中,我们提出了一种基于子流和集成学习特征的流量分类方法。为了消除不稳定的网络环境,并利用集成学习的优势,我们将流量分为不同的子流,以减少时间的影响。此外,我们根据每个分类器针对不同应用的准确性,开发了用于实时处理的流程截断方法和聚合机器学习方法。最后,基于从西安交通大学校园网收集的实际交通轨迹的实验结果证明了我们方法的有效性。

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