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Construction of low false alarm and high precision RBFNN for detecting flooding based denial of service attacks using stochastic sensitivity measure

机译:基于随机敏感度度量的基于泛洪的拒绝服务攻击的低虚警和高精度RBFNN的构建

摘要

A good intrusion detection system (IDS) should have high precision on detecting attacks and low false alarm rates. Machine learning techniques for IDS usually yield high false alarm rate. In this work, we propose to construct host-based IDS for flooding-based denial of service (DoS) attacks by minimizing the generalization error bound of the IDS to reduce its false alarm rate and increase its precision. Experiments using artificial datasets support our claims.
机译:一个好的入侵检测系统(IDS)应该具有检测攻击的高精度和较低的误报率。用于IDS的机器学习技术通常会产生较高的虚警率。在这项工作中,我们建议通过最小化IDS的泛化错误范围以降低其误报率并提高其精度,为基于洪泛的拒绝服务(DoS)攻击构建基于主机的IDS。使用人工数据集的实验支持我们的主张。

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