LGCVMLFeb 21, 2020

Calibrating Deep Neural Networks using Focal Loss

arXiv:2002.09437v2626 citationsHas Code
AI Analysis

This addresses the problem of unreliable predictions for users of deep learning models, though it is incremental as it builds on existing focal loss and temperature scaling methods.

The paper tackles miscalibration in deep neural networks by showing that focal loss yields well-calibrated models, and when combined with temperature scaling, it achieves state-of-the-art calibration without compromising accuracy across various datasets and architectures.

Miscalibration - a mismatch between a model's confidence and its correctness - of Deep Neural Networks (DNNs) makes their predictions hard to rely on. Ideally, we want networks to be accurate, calibrated and confident. We show that, as opposed to the standard cross-entropy loss, focal loss [Lin et. al., 2017] allows us to learn models that are already very well calibrated. When combined with temperature scaling, whilst preserving accuracy, it yields state-of-the-art calibrated models. We provide a thorough analysis of the factors causing miscalibration, and use the insights we glean from this to justify the empirically excellent performance of focal loss. To facilitate the use of focal loss in practice, we also provide a principled approach to automatically select the hyperparameter involved in the loss function. We perform extensive experiments on a variety of computer vision and NLP datasets, and with a wide variety of network architectures, and show that our approach achieves state-of-the-art calibration without compromising on accuracy in almost all cases. Code is available at https://github.com/torrvision/focal_calibration.

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