LGAIApr 14, 2025

MiMu: Mitigating Multiple Shortcut Learning Behavior of Transformers

arXiv:2504.10551v12 citationsh-index: 22Frontiers of Computer Science
Originality Incremental advance
AI Analysis

This addresses robustness issues in machine learning models for real-world applications where multiple unknown shortcuts exist, representing an incremental advance over single-shortcut mitigation methods.

The paper tackles the problem of transformers relying on multiple spurious correlations (shortcuts) in data, which harms robustness generalization, and proposes MiMu, a method that improves generalization by mitigating multiple shortcut learning behaviors across NLP and CV tasks.

Empirical Risk Minimization (ERM) models often rely on spurious correlations between features and labels during the learning process, leading to shortcut learning behavior that undermines robustness generalization performance. Current research mainly targets identifying or mitigating a single shortcut; however, in real-world scenarios, cues within the data are diverse and unknown. In empirical studies, we reveal that the models rely to varying extents on different shortcuts. Compared to weak shortcuts, models depend more heavily on strong shortcuts, resulting in their poor generalization ability. To address these challenges, we propose MiMu, a novel method integrated with Transformer-based ERMs designed to Mitigate Multiple shortcut learning behavior, which incorporates self-calibration strategy and self-improvement strategy. In the source model, we preliminarily propose the self-calibration strategy to prevent the model from relying on shortcuts and make overconfident predictions. Then, we further design self-improvement strategy in target model to reduce the reliance on multiple shortcuts. The random mask strategy involves randomly masking partial attention positions to diversify the focus of target model other than concentrating on a fixed region. Meanwhile, the adaptive attention alignment module facilitates the alignment of attention weights to the calibrated source model, without the need for post-hoc attention maps or supervision. Finally, extensive experiments conducted on Natural Language Processing (NLP) and Computer Vision (CV) demonstrate the effectiveness of MiMu in improving robustness generalization abilities.

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