Training Uncertainty-Aware Classifiers with Conformalized Deep Learning

05/12/2022
by   Bat-Sheva Einbinder, et al.
34

Deep neural networks are powerful tools to detect hidden patterns in data and leverage them to make predictions, but they are not designed to understand uncertainty and estimate reliable probabilities. In particular, they tend to be overconfident. We address this problem by developing a novel training algorithm that can lead to more dependable uncertainty estimates, without sacrificing predictive power. The idea is to mitigate overconfidence by minimizing a loss function, inspired by advances in conformal inference, that quantifies model uncertainty by carefully leveraging hold-out data. Experiments with synthetic and real data demonstrate this method leads to smaller conformal prediction sets with higher conditional coverage, after exact calibration with hold-out data, compared to state-of-the-art alternatives.

READ FULL TEXT

page 7

page 26

page 28

research
11/02/2018

Frequentist uncertainty estimates for deep learning

We provide frequentist estimates of aleatoric and epistemic uncertainty ...
research
06/03/2020

Classification with Valid and Adaptive Coverage

Conformal inference, cross-validation+, and the jackknife+ are hold-out ...
research
06/21/2023

Density Uncertainty Layers for Reliable Uncertainty Estimation

Assessing the predictive uncertainty of deep neural networks is crucial ...
research
05/25/2019

Adaptive, Distribution-Free Prediction Intervals for Deep Neural Networks

This paper addresses the problem of assessing the variability of predict...
research
02/24/2023

Retrospective Uncertainties for Deep Models using Vine Copulas

Despite the major progress of deep models as learning machines, uncertai...
research
07/03/2020

Confidence-Aware Learning for Deep Neural Networks

Despite the power of deep neural networks for a wide range of tasks, an ...
research
04/16/2021

Controlled abstention neural networks for identifying skillful predictions for regression problems

The earth system is exceedingly complex and often chaotic in nature, mak...

Please sign up or login with your details

Forgot password? Click here to reset