An XAI-based Analysis of Shortcut Learning in Neural Networks
An XAI-based Analysis of Shortcut Learning in Neural Networks
Machine learning models tend to learn spurious features - features that strongly correlate with target labels but are not causal. Existing approaches to mitigate models' dependence on spurious features work in some cases, but fail in others. In this paper, we systematically analyze how and where neural networks encode spurious correlations. We introduce the neuron spurious score, an XAI-based diagnostic measure to quantify a neuron's dependence on spurious features. We analyze both convolutional neural networks (CNNs) and vision transformers (ViTs) using architecture-specific methods. Our results show that spurious features are partially disentangled, but the degree of disentanglement varies across model architectures. Furthermore, we find that the assumptions behind existing mitigation methods are incomplete. Our results lay the groundwork for the development of novel methods to mitigate spurious correlations and make AI models safer to use in practice.
Phuong Quynh Le、J?rg Schl?tterer、Christin Seifert
计算技术、计算机技术
Phuong Quynh Le,J?rg Schl?tterer,Christin Seifert.An XAI-based Analysis of Shortcut Learning in Neural Networks[EB/OL].(2025-04-22)[2025-05-26].https://arxiv.org/abs/2504.15664.点此复制
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