Shortcut Learning
Shortcut learning, where machine learning models prioritize easily learned but misleading correlations over genuine underlying patterns, is a significant challenge hindering the reliability and generalizability of AI systems. Current research focuses on identifying and mitigating these shortcuts across various domains, including natural language processing, computer vision (especially medical imaging), and reinforcement learning, employing techniques like data augmentation, counterfactual generation, and the optimization of explanation methods (e.g., Layer-Wise Relevance Propagation). Addressing shortcut learning is crucial for improving the robustness, fairness, and trustworthiness of AI models, ultimately leading to more reliable and impactful applications in diverse fields.
Papers
Less Learn Shortcut: Analyzing and Mitigating Learning of Spurious Feature-Label Correlation
Yanrui Du, Jing Yan, Yan Chen, Jing Liu, Sendong Zhao, Qiaoqiao She, Hua Wu, Haifeng Wang, Bing Qin
Eye-gaze-guided Vision Transformer for Rectifying Shortcut Learning
Chong Ma, Lin Zhao, Yuzhong Chen, Lu Zhang, Zhenxiang Xiao, Haixing Dai, David Liu, Zihao Wu, Zhengliang Liu, Sheng Wang, Jiaxing Gao, Changhe Li, Xi Jiang, Tuo Zhang, Qian Wang, Dinggang Shen, Dajiang Zhu, Tianming Liu