TASTE: Task-Aware Out-of-Distribution Detection via Stein Operators
About
Out-of-distribution detection methods are often either data-centric, detecting deviations from the training input distribution irrespective of their effect on a trained model, or model-centric, relying on classifier outputs without explicit reference to data geometry. We propose TASTE (Task-Aware STEin operators): a task-aware framework based on so-called Stein operators, which allows us to link distribution shift to the input sensitivity of the model. We show that the resulting operator admits a clear geometric interpretation as a projection of distribution shift onto the sensitivity field of the model, yielding theoretical guarantees. Beyond detecting the presence of a shift, the same construction enables its localisation through a coordinate-wise decomposition, and for image data-provides interpretable per-pixel diagnostics. Experiments on controlled Gaussian shifts, MNIST under geometric perturbations, and CIFAR-10 perturbed benchmarks demonstrate that the proposed method aligns closely with task degradation while outperforming established baselines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| OOD Detection | CIFAR-10 standard (test) | -- | 17 | |
| OOD Detection | CIFAR-10 Adversarial FGSM, PGD, and AutoAttack averages (test) | AUROC61.44 | 7 | |
| OOD Detection | CIFAR-10 Overall (Combined Shift Regimes) Final aggregate (test) | AUROC62.85 | 7 | |
| OOD Detection | CIFAR-10-C Corruption average (test) | AUROC61.93 | 7 | |
| OOD Detection | OOD-benchmarks SVHN, LSUN, iSUN, Textures, Places365 (test) | AUROC0.7647 | 7 |