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首页> 外文期刊>Journal of Information Security >Comparing the Area of Data Mining Algorithms in Network Intrusion Detection
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Comparing the Area of Data Mining Algorithms in Network Intrusion Detection

机译:比较网络入侵检测中数据挖掘算法的范围

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The network-based intrusion detection has become common to evaluate machine learning algorithms. Although the KDD Cup’99 Dataset has class imbalance over different intrusion classes, still it plays a significant role to evaluate machine learning algorithms. In this work, we utilize the singular valued decomposition technique for feature dimension reduction. We further reconstruct the features form reduced features and the selected eigenvectors. The reconstruction loss is used to decide the intrusion class for a given network feature. The intrusion class having the smallest reconstruction loss is accepted as the intrusion class in the network for that sample. The proposed system yield 97.90% accuracy on KDD Cup’99 dataset for the stated task. We have also analyzed the system with individual intrusion categories separately. This analysis suggests having a system with the ensemble of multiple classifiers; therefore we also created a random forest classifier. The random forest classifier performs significantly better than the SVD based system. The random forest classifier achieves 99.99% accuracy for intrusion detection on the same training and testing data set.
机译:基于网络的入侵检测已成为评估机器学习算法的常见方法。尽管KDD Cup的99数据集在不同的入侵类别上存在类别失衡,但它在评估机器学习算法方面仍起着重要作用。在这项工作中,我们利用奇异值分解技术来减少特征维数。我们进一步从缩小的特征和选定的特征向量重构特征。重建损失用于确定给定网络功能的入侵类别。对于该样本,重构损失最小的入侵类别被接受为网络中的入侵类别。对于指定任务,建议的系统在KDD Cup 99数据集上的准确率达到97.90%。我们还分别分析了具有单独入侵类别的系统。该分析表明拥有一个具有多个分类器集合的系统。因此,我们还创建了一个随机森林分类器。随机森林分类器的性能明显优于基于SVD的系统。在相同的训练和测试数据集上,随机森林分类器的入侵检测精度达到99.99%。

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