基于在线拉普拉斯双支持向量机的半监督入侵检测

Arezoo Mousavi, S. S. Ghidary, Zohre Karimi
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引用次数: 7

摘要

在过去的几十年里,网络安全已经成为一个众所周知的问题。机器学习技术是检测恶意活动和网络威胁的强大方法。大多数以前的工作都是学习离线监督分类器,而它们需要大量的标记示例,并且还应该更新模型,因为在现实世界的应用中数据会随着时间的推移而变化。为了解决这些问题,我们提出了一种新的拉普拉斯双支持向量机分类器的在线版本,该分类器可以利用嵌入在未标记数据中的边缘分布的几何信息来构建更准确、更快的半监督分类器。在大型网络数据集上的实验结果表明,两个非并行超平面组合的在线Lap-TSVM在计算时间和存储空间相当的情况下提高了精度。
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Semi-supervised intrusion detection via online laplacian twin support vector machine
Network security has become one of the well-known concerns in the last decades. Machine learning techniques are robust methods in detecting malicious activities and network threats. Most previous works learn offline supervised classifiers while they require large amounts of labeled examples and also should update models because the data change over time in real world applications. To alleviate these problems, we propose a novel online version of laplacian twin support vector machine classifier, which can exploit the geometry information of the marginal distribution embedded in unlabeled data to construct a more accurate and faster semi-supervised classifier. The results of experiments on large network datasets show that Online Lap-TSVM combined by two nonparallel hyper planes improves the accuracy with the comparable computing time and storage to Lap-TSVM.
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