SEM: Sparse Embedding Modulation for Post-Hoc Debiasing of Vision-Language Models
arXiv cs.CV / 3/20/2026
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Key Points
- The paper introduces Sparse Embedding Modulation (SEM), a post-hoc, zero-shot debiasing framework for vision-language models like CLIP that operates in a Sparse Autoencoder latent space.
- SEM disentangles bias- and query-relevant features by decomposing CLIP text embeddings into sparse components and modulating bias-relevant neurons.
- The approach enables non-linear debiasing interventions and demonstrates substantial fairness gains in retrieval and zero-shot classification across four benchmark datasets and two CLIP backbones.
- Overall, the results indicate that sparse latent representations can provide an effective foundation for debiasing vision-language models without sacrificing semantic fidelity.
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