Review Article

A Critical Review of Artificial Intelligence Based Approaches in Intrusion Detection: A Comprehensive Analysis

Table 1

Critical review of machine learning (ML) based approaches in ID.

RefAuthorsYearCited byML approachAccuracy (%)

[33]Ahmed et al.202214Random forest (RF)95.1
[34]Singh et al.202215Support vector Regression98
[35]Pranto et al.20229ML-based ensemble feature selection strategy99.5
[36]Raghuvanshi et al.202248SVM98
[37]Albulayhi et al.202228ML-based IDS99.98
[38]Asif et al.202179ML-based method tangled with the MapReduce-Based intelligent model for ID (MR-IMID)97.7
[39]Çavuşoğlu2019112Hybrid and layered IDS99.7
[40]Alqahtani et al.202082RF94
[41]Liu and Lang2019457KNN99
[42]Ren et al.201980IDS by using hybrid data optimization (DO-IDS)92.8
[43]Bindra and Sood201953RF96
[44]Sai Kiran et al.202043SVM98.95
[45]Saranya et al.2020127RF99.81
[46]Logeswari et al.20235Hybrid feature selection (HFS-light GBM IDS)98.72
[47]Muhammad and Saleem202239Naïve Bayes98.6