A Consistent and Differentiable L Canonical Calibration Error Estimator

Neural Information Processing Systems 

Calibrated probabilistic classifiers are models whose predicted probabilities can directly be interpreted as uncertainty estimates. It has been shown recently that deep neural networks are poorly calibrated and tend to output overconfident predictions.