结合半监督学习和主动学习的网络安全监控

Yun Pan
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引用次数: 0

摘要

在网络入侵和网络安全监控中,存在着海量的数据。当直接使用监督学习方法时,收集标记样本将花费大量时间,成本昂贵。为了解决这一问题,本文采用主动学习模型来检测网络入侵。首先,利用大量未标记样本建立加权支持向量数据描述模型;然后,利用最有价值的样本与主动学习相结合,提高网络入侵的性能,主动学习利用标记样本和未标记样本在半监督学习方法中扩展加权支持数据描述模型。实验结果表明,主动学习可以利用少量标记样本来减少人工标记工作的成本,更适合实际的网络入侵检测环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Security Monitoring by Combining Semi-Supervised Learning and Active Learning
In network intrusion and network security monitoring, there is massive data. When using supervised learning method directly, it will cost lots of time to collect labeled samples, which is expensive. In order to solve this issue, this paper adopts an active learning model to detect network intrusion. First, massive unlabeled samples are used to establish a weighted support vector data description model. Then, the most valuable samples are used to improve the performance of network intrusion by combining with active learning, which utilizes labeled samples and unlabeled samples to extend the weighted support data description model in a semi-supervised learning method. The experimental results show that the active learning can utilize minor labeled sample to reduce the cost of manual labeling work, which is more suitable for an actual network intrusion detection environment.
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