Dynamic Distribution Shifts: OoD Detection with Dynamic Thresholds H/F
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Palaiseau
Description de l'offre The detection of out-of-distribution (OoD) samples is crucial for deploying deep learning (DL) models in real-world scenarios. OoD samples pose a challenge to DL models as they are not represented in the training data and can naturally arrive during deployment (i.e., a distribution shift), increasing the risk of obtaining wrong predictions. Consequently, OoD samples... |
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