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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Regression | Kin8nm | NCIW0.205 | 22 | |
| Regression | allstate | NCIW0.342 | 22 | |
| Regression | superconductor | NCIW24.7 | 22 | |
| Regression | Airfoil | NCIW0.29 | 22 | |
| Regression | Parkinsons | NCIW0.398 | 22 | |
| Regression | elevator | NCIW0.116 | 19 | |
| Regression | qsar | NCIW0.456 | 17 | |
| Regression | ailerons | NCIW0.204 | 17 | |
| Regression | Insurance | NCIW0.397 | 17 | |
| Regression | Airfoil | PICP98 | 11 |