WeNLEX: Weakly Supervised Natural Language Explanations for Multilabel Chest X-ray Classification
arXiv cs.CV / 3/20/2026
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Key Points
- WeNLEX introduces a weakly supervised approach to generate natural language explanations for multilabel chest X-ray classification, reducing the need for large annotated explanation datasets.
- Faithfulness is enforced by generating images from explanations and matching them to the original images in the black-box model's feature space.
- Plausibility is ensured through distribution alignment with a small database of clinician-annotated explanations, enabling credible explanations with as few as 5 ground-truth examples per diagnosis.
- The method works in both post-hoc and in-model settings, and when trained jointly, it improves the classifier AUC by 2.21%, showing interpretability can boost downstream performance.
- Explanations can be adapted to different audiences by changing the explanation database, demonstrated with a layman version for non-medical users.
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