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Shortcut Mitigation via Spurious-Positive Samples

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Shortcut mitigation strategies commonly rely on training data annotations, group-balanced held-out data or the presence of all groups, i.e., all combinations of (spurious) attributes and classes, in the training data. However, these requirements are rarely met in practice. We instead propose a method for targeted model analysis to identify a small set of instances in which the model relies on spurious attributes. Using that set and following ``this feature should not be used for prediction'' reasoning, we identify highly relevant neurons in an intermediate layer and regularize their impact. This ensures that models learn to depend on informative features rather than being right for the wrong reasons, thereby improving robustness without requiring additional balanced held-out data or annotations.

Phuong Quynh Le, J\"org Schl\"otterer, Sari Sadiya, Gemma Roig, Christin Seifert• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationISIC (test)--
24
Image ClassificationWaterbirds 95% (test)
Worst-Group Accuracy89.2
18
Image ClassificationWaterbirds 100% (test)
Worst Group Accuracy90.7
17
Image ClassificationKnee (test)
WGA81
16
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