Paper

Calibration of Model Uncertainty for Dropout Variational Inference

The model uncertainty obtained by variational Bayesian inference with Monte Carlo dropout is prone to miscalibration. In this paper, different logit scaling methods are extended to dropout variational inference to recalibrate model uncertainty... (read more)

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