RangeAD: Fast On-Model Anomaly Detection
arXiv cs.LG / 3/19/2026
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Key Points
- RangeAD introduces On-Model AD, which leverages neuron‑wise output ranges from the primary model to perform anomaly detection without a separate AD model.
- The proposed RangeAD algorithm achieves superior performance on high‑dimensional tasks while substantially reducing inference costs.
- By integrating anomaly detection into the primary model, RangeAD enables a more efficient and scalable approach to monitoring data distribution shifts.
- The paper frames On-Model AD as a practical framework for efficient anomaly detection in real‑world ML systems.
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