基于XGBoost的网络入侵检测

A. Gouveia, M. Correia
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引用次数: 4

摘要

XGBoost是一种最近受到越来越多关注的机器学习方法。由于它的表现,它赢得了Kaggle的希格斯机器学习挑战赛,以及其他几项Kaggle比赛。在这方面,我们探讨了在基于异常的网络入侵检测的背景下使用XGBoost,这是一个存在相当大差距的领域。我们不仅用两个最新的数据集研究了XGBoost的性能,还研究了如何优化其性能和模型参数的选择。我们还提供了关于哪些数据集特性最适合进行性能调优的见解。
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Network Intrusion Detection with XGBoost
XGBoost is a recent machine learning method that has been getting increasing attention. It won Kaggle’s Higgs Machine Learning Challenge, among several other Kaggle competitions, due to its performance. In this , we explore the use of XGBoost in the context of anomaly-based network intrusion detection, an area in which there is a considerable gap. We study not only the performance of XGBoost with two recent datasets, but also how to optimize its performance and model parameter choice. We also provide insights into which dataset features are best for performance tuning.
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