基于ai的DDoS检测系统最优特征选择方法研究

Sajal Saha, Annita Tahsin Priyoti, A. Sharma, Anwar Haque
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引用次数: 9

摘要

网络攻击正在迅速增加,因此开发有效的入侵检测和预防工具以确保网络空间的安全和安全至关重要。分布式拒绝服务(DDoS)是最著名的数字威胁之一,危及任何网络物理系统。DDoS通过使主机节点充斥不必要的服务请求来防止主机为合法流量提供服务。目前,基于机器学习的入侵检测系统(IDS)采用不同的特征选择(FS)方法从大型数据集中提取特征子集,以提高模型性能并减少训练时间。在这项研究工作中,我们使用UNSW-NB15数据集[1]进行了全面的分析,以评估不同FS技术在DDoS攻击分类中使用机器学习(ML)和深度学习(DL)模型的性能。此外,还实现了一种称为多数投票(MV)的集成特征选择(EN-FS)技术,将单个FS方法的输出组合在一起,以提取最优特征集。我们的集成特征选择方法显著地将特征从42个减少到15个,比原始特征减少了64%。最后,进行了广泛的实验,以估计和比较基于ML和基于dl的DDoS检测系统中单个,集成和原始特征集的性能。根据我们的分析,基于集成特征集的分类模型比其他基于单个特征集的模型具有更高的准确率,更低的误报率(FPR)和更好的执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an Optimal Feature Selection Method for AI-Based DDoS Detection System
Cyber-attacks are increasing rapidly, so developing effective intrusion detection and prevention tools for a secure and safer cyberspace is crucial. DDoS (Distributed Denial of Services) is one of the most well-known digital threats, endangering any cyber-physical system. DDoS prevents the host from serving the legitimate traffic by overflowing the host node with unwanted service requests. Nowadays, machine learning-based IDS (Intrusion Detection System) uses different Feature Selection (FS) methods to extract a feature subset from a large dataset to increase the model performance and decrease the training time. In this research work, we used the UNSW-NB15 dataset [1] to conduct a comprehensive analysis for evaluating the performance of different FS techniques in DDoS attack classification using both Machine Learning (ML) and Deep Learning (DL) models. Furthermore, an Ensemble Feature Selection (EN-FS) technique called Majority Voting (MV) has been implemented to combine the individual FS method’s output to extract an optimal feature set. Our ensemble feature selection approach significantly reduces the features from 42 to 15, which is 64% less than the original features. Lastly, an extensive experiment has been performed to estimate and compare the performance of individual, ensemble, and original feature set in both ML and DL-based DDoS detection systems. According to our analysis, the ensemble feature set-based classification model exhibits higher accuracy, lower False Positive Rate (FPR), and better execution time than the other individual feature set-based models.
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