Hierarchical Classification for Intrusion Detection System: Effective Design and Empirical Analysis
arxiv(2024)
摘要
With the increased use of network technologies like Internet of Things (IoT)
in many real-world applications, new types of cyberattacks have been emerging.
To safeguard critical infrastructures from these emerging threats, it is
crucial to deploy an Intrusion Detection System (IDS) that can detect different
types of attacks accurately while minimizing false alarms. Machine learning
approaches have been used extensively in IDS and they are mainly using flat
multi-class classification to differentiate normal traffic and different types
of attacks. Though cyberattack types exhibit a hierarchical structure where
similar granular attack subtypes can be grouped into more high-level attack
types, hierarchical classification approach has not been explored well. In this
paper, we investigate the effectiveness of hierarchical classification approach
in IDS. We use a three-level hierarchical classification model to classify
various network attacks, where the first level classifies benign or attack, the
second level classifies coarse high-level attack types, and the third level
classifies a granular level attack types. Our empirical results of using 10
different classification algorithms in 10 different datasets show that there is
no significant difference in terms of overall classification performance (i.e.,
detecting normal and different types of attack correctly) of hierarchical and
flat classification approaches. However, flat classification approach
misclassify attacks as normal whereas hierarchical approach misclassify one
type of attack as another attack type. In other words, the hierarchical
classification approach significantly minimises attacks from misclassified as
normal traffic, which is more important in critical systems.
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