ECoLAD: Deployment-Oriented Evaluation for Automotive Time-Series Anomaly Detection

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2025Xiangfei Qiu, Zhe Li et al.
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Founder's Pitch

"ECoLAD provides a deployment-oriented evaluation protocol for time-series anomaly detection in automotive applications."

Anomaly DetectionScore: 5View PDF ↗

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