Intrusion detection using a cascade of boosted classifiers (CBC) (original) (raw)
2014 International Joint Conference on Neural Networks (IJCNN), 2014
Abstract
A boosting-based cascade for automatic decomposition of multiclass learning problems into several binary classification problems is presented. The proposed cascade structure uses a boosted classifier at each level and use a filtering process to reduce the problem size at each level. The method has been used for detecting malicious traffic patterns using a benchmark intrusion detection dataset. A comparison of the approach with four boosting-based multiclass learning algorithms is also provided on this dataset.
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