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Network Intrusion Detection Based on Active Semi-supervised Learning

机译:基于主动半监督学习的网络入侵检测

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With the increasing scale and automation of network attacks, traditional detection methods have been unable to meet the demand for intrusion detection in the current network environment, and we always face with the scarcity of label data in the network environment. In view of this situation, this paper proposes a network intrusion detection algorithm based on active semi-supervised learning, by setting a minimum class-distance threshold for active learning and a highest classification threshold for semi-supervised learning, then selecting unlabeled samples with rich information content, which labeled and added to the training set to retrain the model, and iterating repeatedly until meet the established conditions. The proposed algorithm combines the weak sensitivity of semi-supervised learning to labels and the selectivity of active learning for implicit information. The experimental results on the CTU and CICIDS2017 datasets show that the various indicators of the combined algorithm have been significantly improved.
机译:随着网络攻击的规模和自动化,传统的检测方法无法满足当前网络环境中的入侵检测需求,我们始终面临网络环境中标签数据的稀缺性。鉴于这种情况,本文提出了一种基于主动半导体学习的网络入侵检测算法,通过设置活动学习的最小类距离阈值以及半监督学习的最高分类阈值,然后选择具有富有的未标记的样本信息内容,标记并添加到培训集以重新启动模型,并重复迭代,直到满足既定条件。所提出的算法将半监督学习的弱灵敏度与标签的弱灵敏度相结合,以及用于隐式信息的主动学习的选择性。 CTU和Cicids2017数据集上的实验结果表明,组合算法的各种指标得到了显着改善。

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