Retrieving Counterfactuals Improves Visual In-Context Learning
arXiv cs.CL / 3/18/2026
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Key Points
- The paper introduces CIRCLES, a framework that actively retrieves counterfactual-style demonstration examples to improve visual in-context learning in vision-language models.
- It achieves this by performing attribute-guided composed image retrieval to build demonstration sets that encourage causal reasoning between visual attributes and outcomes.
- Across four diverse datasets, CIRCLES consistently outperforms existing retrieval-based methods, with particularly large gains for small-scale models under information scarcity.
- The authors provide code at https://github.com/gzxiong/CIRCLES to enable reproducibility and further research.
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