Feb. 1, 2024, 12:42 p.m. | Balamurali Murugesan Bingyuan Liu Adrian Galdran Ismail Ben Ayed Jose Dolz

cs.CV updates on arXiv.org arxiv.org

Despite the undeniable progress in visual recognition tasks fueled by deep neural networks, there exists recent evidence showing that these models are poorly calibrated, resulting in over-confident predictions. The standard practices of minimizing the cross entropy loss during training promote the predicted softmax probabilities to match the one-hot label assignments. Nevertheless, this yields a pre-softmax activation of the correct class that is significantly larger than the remaining activations, which exacerbates the miscalibration problem. Recent observations from the classification literature suggest …

cs.cv entropy evidence hot loss match networks neural networks practices predictions progress promote recognition segmentation softmax standard tasks training visual

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