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Effective Multi-Stage Training Model For Edge Computing Devices In Intrusion Detection
Effective Multi-Stage Training Model For Edge Computing Devices In Intrusion Detection
Huỳnh Trọng Thưa
Intrusion detection poses a significant challenge within expansive and persistently interconnected
environments. As malicious code continues to advance and sophisticated attack methodologies proliferate,
various advanced deep learning-based detection approaches have been proposed. Nevertheless, the
complexity and accuracy of intrusion detection models still need further enhancement to render them more
adaptable to diverse system categories, particularly within resource-constrained devices, such as those
embedded in edge computing systems. This research introduces a three-stage training paradigm,
augmented by an enhanced pruning methodology and model compression techniques. The objective is to
elevate the system's effectiveness, concurrently maintaining a high level of accuracy for intrusion
detection. Empirical assessments conducted on the UNSW-NB15 dataset evince that this solution notably
reduces the model's dimensions, while upholding accuracy levels equivalent to similar proposals.
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