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Machine Learning for Web Intrusion Detection: A Comparative Analysis of Feature Selection Methods mRMR and PFI

机译:网络入侵检测机器学习:特征选择方法MRMR和PFI的比较分析

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Select from the best features in a complex dataset that is a critical task for machine learning algorithms. This work presents a comparative analysis between two resource selection techniques: Minimum Redundancy Maximum Relevance (mRMR) and Permutation Feature Important (PFI). The application of PFI to the dataset in issue is unusual. The dataset used in the experiments is HTTP CSIC 2010, which shows great results with the mRMR observed in a related work [22]. Our PFI tests resulted in a selection of features best suited for machine learning methods and the best results for an accuracy of 97% with logistic regression and Bayes Point Machine, 98% with Support Vector Machine, and 99.9% using an artificial neural network.
机译:从复杂数据集中的最佳功能中选择是计算机学习算法的关键任务。这项工作介绍了两个资源选择技术之间的比较分析:最小冗余最大相关性(MRMR)和置换特征重要(PFI)。 PFI在问题中应用PFI对数据集是不寻常的。实验中使用的数据集是HTTP CSIC 2010,其在相关工作中观察到的MRMR显示了很大的结果[22]。我们的PFI测试导致选择的功能最适合机器学习方法,最佳结果为逻辑回归和贝叶斯点机,98%,带有人工神经网络的98%,99.9%。

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