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Single-Model Uncertainties for Deep Learning

About

We provide single-model estimates of aleatoric and epistemic uncertainty for deep neural networks. To estimate aleatoric uncertainty, we propose Simultaneous Quantile Regression (SQR), a loss function to learn all the conditional quantiles of a given target variable. These quantiles can be used to compute well-calibrated prediction intervals. To estimate epistemic uncertainty, we propose Orthonormal Certificates (OCs), a collection of diverse non-constant functions that map all training samples to zero. These certificates map out-of-distribution examples to non-zero values, signaling epistemic uncertainty. Our uncertainty estimators are computationally attractive, as they do not require ensembling or retraining deep models, and achieve competitive performance.

Natasa Tagasovska, David Lopez-Paz• 2018

Related benchmarks

TaskDatasetResultRank
RegressionKin8nm
NCIW0.205
22
Regressionallstate
NCIW0.342
22
Regressionsuperconductor
NCIW24.7
22
RegressionAirfoil
NCIW0.29
22
RegressionParkinsons
NCIW0.398
22
Regressionelevator
NCIW0.116
19
Regressionqsar
NCIW0.456
17
Regressionailerons
NCIW0.204
17
RegressionInsurance
NCIW0.397
17
RegressionAirfoil
PICP98
11
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