Anais Do XIX Encontro Nacional De Inteligência Artificial E Computacional (ENIAC 2022) 2022
DOI: 10.5753/eniac.2022.227603
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On the performance of uncertainty estimation methods for deep-learning based image classification models

Abstract: Previous works have shown that modern neural networks tend to be overconfident; thus, for deep learning models to be trusted and adopted in critical applications, reliable uncertainty estimation (UE) is essential. However, many questions are still open regarding how to fairly compare UE methods. This work focuses on the task of selective classification and proposes a methodology where the predictions of the underlying model are kept fixed and only the UE method is allowed to vary. Experiments are performed for… Show more

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