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Network security analysis of weighted neural network with association rules mining

机译:与关联规则挖掘加权神经网络的网络安全分析

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This article applies Co-S3OM semi-supervised learning algorithm to intrusion detection field and proposes specific semi-supervised network intrusion classification scheme. In accordance with different type of attack, different mark samples are selected as training set to complete initialization of three S3OM classifiers; marked sample data is expanded with coordinative vote by three classifiers. Test structure process is given in detail to use KDD Cup 99 data set to perform semi-supervised classification. It shows in test that intrusion classification model based on Co-S3OM is of high data sample marking rate and high intrusion classification rate.
机译:本文将CO-S3M半监督学习算法应用于入侵检测场,并提出了特定的半监督网络入侵分类方案。根据不同类型的攻击,选择不同的标记样本作为训练设置以完成三个S3M分类器的初始化;标记的示例数据随三个分类器的协调投票扩展。详细给出了测试结构过程以使用KDD Cup 99数据集来执行半监督分类。它显示在测试中,基于CO-S3M的入侵分类模型具有高数据样本标记率和高入侵分类率。

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