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An analysis of 'A feature reduced intrusion detection system using ANN classifier' by Akashdeep et al. expert systems with applications (2017)

机译:Akashdeep等人对“使用ANN分类器的特征减少入侵检测系统”的分析。具有应用程序的专家系统(2017)

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This paper analyses the recently proposed article "A feature reduced intrusion detection system using ANN classifier" by Akashdeep, Ishfaq Manzoor & Neeraj Kumar, (Expert systems with Applications, 2017) which has a limitation in its experimental setup. The work of Akashdeep et.al has crafted the test dataset to attain improved accuracy. They have utilized 5 fractional test datasets for performance evaluation. The reduced list of features obtained in their work does not give the asserted performance for the original test dataset. Table 18 of the above article by Akashdeep et.al gives the performance comparison of their work with existing works which isn't appropriate as these works have different test dataset composition. Another issue with the work of Akashdeep et.al is the utilization of partial training dataset for determining the reduced list of features. Their work reduces the training dataset by random undersampling of the majority class instances and random replication of the minority class instances. The reduced list of features obtained by Akashdeep et.al comprises 25 features. This work applies the feature selection algorithm proposed by Akashdeep et.al on the original training dataset leading to a feature subset having 29 features. It has been observed experimentally that the reduced feature subset (29 features) obtained in later outperforms the former reduced feature set (25 features). This work uses the classification algorithms c4.5, Naive Bayes and Random Forest for performance comparison of these reduced feature sets. Oversampling one class may deteriorate the performance of another class. This work also evaluates random undersampling/oversampling of a specific class to design an optimal training dataset. The results show that the classification models developed using this training dataset have a better detection rate for the minority classes. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文分析了Akashdeep,Ishfaq Manzoor和Neeraj Kumar(专家系统,应用程序,2017年)最近提出的文章“使用ANN分类器的特征减少入侵检测系统”,该文章的实验设置受到了限制。 Akashdeep等人的工作精心设计了测试数据集,以提高准确性。他们利用5个分数测试数据集进行了性能评估。在他们的工作中获得的减少的功能列表并未提供原始测试数据集的宣称性能。 Akashdeep等人在上述文章中的表18给出了他们的工作与现有工作的性能比较,这是不合适的,因为这些工作具有不同的测试数据集组成。 Akashdeep等人的工作的另一个问题是利用局部训练数据集来确定简化的特征列表。他们的工作通过多数类实例的随机欠采样和少数类实例的随机复制来减少训练数据集。 Akashdeep等人获得的简化特征列表包括25个特征。这项工作将Akashdeep等人提出的特征选择算法应用于原始训练数据集,从而得出具有29个特征的特征子集。实验上已经观察到,稍后获得的缩小特征子集(29个特征)优于以前的缩小特征集(25个特征)。这项工作使用分类算法c4.5,朴素贝叶斯和随机森林对这些简化特征集进行性能比较。对一个类别进行过度采样可能会降低另一个类别的性能。这项工作还评估特定类别的随机欠采样/过采样,以设计最佳训练数据集。结果表明,使用该训练数据集开发的分类模型对少数民族类别的检测率更高。 (C)2019 Elsevier Ltd.保留所有权利。

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