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Comparative Analysis of Feature Selection Methods in Clustering-Based Detection Methods

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Feature selection plays a crucial role in the effectiveness of distributed denial of service (DDoS) attack detection methods, particularly as network traffic data becomes increasingly complex. This study conducts a categorical investigation of feature selection methods in clustering-based DDoS attack detection, comparing wrapper and hybrid approaches. Through two experiments using one-way ANOVA analyses, the research evaluated the effectiveness of different clustering approaches and supervised learning algorithms. The findings reveal that clustering-based wrapper methods performed more effectively than supervised learning approaches in feature selection for clustering-based DDoS attack detection methods. The results show strong statistical significance for clustering-based methods, with p-values of less than 0.05 and η2 values indicating robust relationships between methods. Our clustering-based wrapper approach achieved a 57.7% reduction in false positive rates compared to supervised learning methods (mean FPR of 0.17 versus 0.40) on the CICIDS2017 dataset, with certain configurations reaching a false positive rate of 0.000. A similar pattern was observed with the NSL-KD dataset, where clustering-based methods reduced false positive rates by 63.1% compared to supervised approaches (0.048 versus 0.128). This study provides empirical evidence for effective combinations in which organizations and agencies can implement DDoS attack detection methods that have high performance.
Title: Comparative Analysis of Feature Selection Methods in Clustering-Based Detection Methods
Description:
Feature selection plays a crucial role in the effectiveness of distributed denial of service (DDoS) attack detection methods, particularly as network traffic data becomes increasingly complex.
This study conducts a categorical investigation of feature selection methods in clustering-based DDoS attack detection, comparing wrapper and hybrid approaches.
Through two experiments using one-way ANOVA analyses, the research evaluated the effectiveness of different clustering approaches and supervised learning algorithms.
The findings reveal that clustering-based wrapper methods performed more effectively than supervised learning approaches in feature selection for clustering-based DDoS attack detection methods.
The results show strong statistical significance for clustering-based methods, with p-values of less than 0.
05 and η2 values indicating robust relationships between methods.
Our clustering-based wrapper approach achieved a 57.
7% reduction in false positive rates compared to supervised learning methods (mean FPR of 0.
17 versus 0.
40) on the CICIDS2017 dataset, with certain configurations reaching a false positive rate of 0.
000.
A similar pattern was observed with the NSL-KD dataset, where clustering-based methods reduced false positive rates by 63.
1% compared to supervised approaches (0.
048 versus 0.
128).
This study provides empirical evidence for effective combinations in which organizations and agencies can implement DDoS attack detection methods that have high performance.

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