Title
An Effective Ensemble Automatic Feature Selection Method for Network Intrusion Detection
Abstract
The mass of redundant and irrelevant data in network traffic brings serious challenges to intrusion detection, and feature selection can effectively remove meaningless information from the data. Most current filtered and embedded feature selection methods use a fixed threshold or ratio to determine the number of features in a subset, which requires a priori knowledge. In contrast, wrapped feature selection methods are computationally complex and time-consuming; meanwhile, individual feature selection methods have a bias in evaluating features. This work designs an ensemble-based automatic feature selection method called EAFS. Firstly, we calculate the feature importance or ranks based on individual methods, then add features to subsets sequentially by importance and evaluate subset performance comprehensively by designing an NSOM to obtain the subset with the largest NSOM value. When searching for a subset, the subset with higher accuracy is retained to lower the computational complexity by calculating the accuracy when the full set of features is used. Finally, the obtained subsets are ensembled, and by comparing the experimental results on three large-scale public datasets, the method described in this study can help in the classification, and also compared with other methods, we discover that our method outperforms other recent methods in terms of performance.
Year
DOI
Venue
2022
10.3390/info13070314
INFORMATION
Keywords
DocType
Volume
cyber security, intrusion detection system (IDS), automatic feature selection, normalized score of mixed (NSOM), ensemble method
Journal
13
Issue
ISSN
Citations 
7
2078-2489
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Yang Zhang123.10
Hongpo Zhang200.34
Bo Zhang3419.80