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Thinkback: Task-SpecificOut-of-Distribution Detection

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arxiv 2107.06668 v1 pith:DDRPJGIB submitted 2021-07-13 cs.LG cs.AI

Thinkback: Task-SpecificOut-of-Distribution Detection

classification cs.LG cs.AI
keywords detectionout-of-distributionmodelmodelssamplestrainingaccuratebelonging
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The increased success of Deep Learning (DL) has recently sparked large-scale deployment of DL models in many diverse industry segments. Yet, a crucial weakness of supervised model is the inherent difficulty in handling out-of-distribution samples, i.e., samples belonging to classes that were not presented to the model at training time. We propose in this paper a novel way to formulate the out-of-distribution detection problem, tailored for DL models. Our method does not require fine tuning process on training data, yet is significantly more accurate than the state of the art for out-of-distribution detection.

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