NetSight continually detects distribution shifts in network intrusion data and adapts a supervised model using pseudo-labeling and knowledge distillation, achieving up to 11.72% F1 improvement over methods requiring manual labeling on three long-term datasets.
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Shift Detection and Adaptation for Network Intrusion Detection
NetSight continually detects distribution shifts in network intrusion data and adapts a supervised model using pseudo-labeling and knowledge distillation, achieving up to 11.72% F1 improvement over methods requiring manual labeling on three long-term datasets.