基于神经网络的入侵检测的级联结构元专家方法

Maxime Labonne, Alexis Olivereau, Baptiste Polvé, D. Zeghlache
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引用次数: 11

摘要

提出了一种集成学习的入侵检测分类方法。与以前的技术相比,它在KDD Cup 99和NSL-KDD数据集上的应用不断提高了分类精度。级联结构的元专家体系结构基于三步优化方法:数据增强、超参数优化和集成学习。首先在每个特定类中使用强专门化创建分类器。然后将这些专家组合成元专家,比组成它们的最佳分类器更准确。最后,元专家被安排在级联体系结构中,其中每个分类器依次有机会识别自己的类。这种方法对于训练集和测试集差异很大的数据集特别有用,就像在这种情况下一样。级联结构元专家方法的分类准确率非常高(KDD Cup 99测试集为94.44%,NSL-KDD测试集为88.39%),假阳性率较低(分别为0.33%和1.94%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cascade-structured Meta-Specialists Approach for Neural Network-based Intrusion Detection
An ensemble learning approach for classification in intrusion detection is proposed. Its application to the KDD Cup 99 and NSL-KDD datasets consistently increases the classification accuracy compared to previous techniques. The cascade-structured meta-specialists architecture is based on a three-step optimization method: data augmentation, hyperparameters optimization and ensemble learning. Classifiers are first created with a strong specialization in each specific class. These specialists are then combined to form meta-specialists, more accurate than the best classifiers that compose them. Finally, meta-specialists are arranged in a cascading architecture where each classifier is successively given the opportunity to recognize its own class. This method is particularly useful for datasets where training and test sets differ greatly, as in this case. The cascade-structured meta-specialists approach achieved a very high classification accuracy (94.44% on KDD Cup 99 test set and 88.39% on NSL-KDD test set) with a low false positive rate (0.33% and 1.94% respectively).
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