Addressing Imbalanced Classes Problem of Intrusion Detection System Using Weighted Extreme Learning Machine

Mohammed Awad, A. Alabdallah
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引用次数: 6

Abstract

The main issues of the Intrusion Detection Systems (IDS) are in the sensitivity of these systems toward the errors, the inconsistent and inequitable ways in which the evaluation processes of these systems were often performed. Most of the previous efforts concerned with improving the overall accuracy of these models via increasing the detection rate and decreasing the false alarm which is an important issue. Machine Learning (ML) algorithms can classify all or most of the records of the minor classes to one of the main classes with negligible impact on performance. The riskiness of the threats caused by the small classes and the shortcoming of the previous efforts were used to address this issue, in addition to the need for improving the performance of the IDSs were the motivations for this work. In this paper, stratified sampling method and different cost-function schemes were consolidated with Extreme Learning Machine (ELM) method with Kernels, Activation Functions to build competitive ID solutions that improved the performance of these systems and reduced the occurrence of the accuracy paradox problem. The main experiments were performed using the UNB ISCX2012 dataset. The experimental results of the UNB ISCX2012 dataset showed that ELM models with polynomial function outperform other models in overall accuracy, recall, and F-score. Also, it competed with traditional model in Normal, DoS and SSH classes.
利用加权极值学习机解决入侵检测系统类不平衡问题
入侵检测系统(IDS)的主要问题是这些系统对错误的敏感性,以及这些系统评估过程中经常使用的不一致和不公平的方法。以往的研究大都是通过提高检测率和降低虚警率来提高这些模型的整体精度,这是一个重要的问题。机器学习(ML)算法可以将次要类的所有或大部分记录分类到一个主要类中,对性能的影响可以忽略不计。小班造成的威胁的风险和以前努力的缺点被用来解决这个问题,此外,需要提高ids的性能是这项工作的动机。本文将分层抽样方法和不同的成本函数方案与具有核、激活函数的极限学习机(ELM)方法相结合,构建具有竞争力的ID解决方案,提高了这些系统的性能,减少了准确性悖论问题的发生。主要实验采用UNB ISCX2012数据集进行。UNB ISCX2012数据集的实验结果表明,具有多项式函数的ELM模型在整体准确率、召回率和f分数方面优于其他模型。同时,在Normal类、DoS类和SSH类中与传统模型竞争。
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