Mysteries of the Deep: Role of Intermediate Representations in Out of Distribution Detection

Neural Information Processing Systems 

Out-of-distribution (OOD) detection is essential for reliably deploying machine learning models in the wild. Yet, most methods treat large pre-trained models as monolithic encoders and rely solely on their final-layer representations for detection.

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