Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Energy-based Hopfield Boosting for Out-of-Distribution Detection

About

Out-of-distribution (OOD) detection is critical when deploying machine learning models in the real world. Outlier exposure methods, which incorporate auxiliary outlier data in the training process, can drastically improve OOD detection performance compared to approaches without advanced training strategies. We introduce Hopfield Boosting, a boosting approach, which leverages modern Hopfield energy (MHE) to sharpen the decision boundary between the in-distribution and OOD data. Hopfield Boosting encourages the model to concentrate on hard-to-distinguish auxiliary outlier examples that lie close to the decision boundary between in-distribution and auxiliary outlier data. Our method achieves a new state-of-the-art in OOD detection with outlier exposure, improving the FPR95 metric from 2.28 to 0.92 on CIFAR-10 and from 11.76 to 7.94 on CIFAR-100.

Claus Hofmann, Simon Schmid, Bernhard Lehner, Daniel Klotz, Sepp Hochreiter• 2024

Related benchmarks

TaskDatasetResultRank
Image ClassificationImageNet-1K 1.0 (val)
Top-1 Accuracy76.3
1866
Image ClassificationCIFAR-100--
622
Image ClassificationCIFAR-10
Accuracy94.02
507
OOD DetectionCIFAR-10 (IND) SVHN (OOD)
AUROC0.9957
91
OOD DetectionCIFAR-10 (ID) vs Places 365 (OOD)
AUROC98.51
77
OOD DetectionCIFAR-100 IND SVHN OOD
AUROC (%)97.07
74
OOD DetectionCIFAR-10 IND iSUN OOD
AUROC99.97
42
OOD DetectionTextures (OOD) with CIFAR-10 (ID) (test)
FPR@9516
40
Out-of-Distribution DetectionCIFAR10 (ID) vs SVHN (OOD)
AUROC99.57
37
OOD DetectionCIFAR-10 OOD (test)
AUROC99.55
36
Showing 10 of 19 rows

Other info

Follow for update