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Improving Coverage in Combined Prediction Sets with Weighted p-values

Main:9 Pages
14 Figures
Bibliography:3 Pages
6 Tables
Appendix:15 Pages
Abstract

Conformal prediction quantifies the uncertainty of machine learning models by augmenting point predictions with valid prediction sets, assuming exchangeability. For complex scenarios involving multiple trials, models, or data sources, conformal prediction sets can be aggregated to create a prediction set that captures the overall uncertainty, often improving precision. However, aggregating multiple prediction sets with individual 1α1-\alpha coverage inevitably weakens the overall guarantee, typically resulting in 12α1-2\alpha worst-case coverage. In this work, we propose a framework for the weighted aggregation of prediction sets, where weights are assigned to each prediction set based on their contribution. Our framework offers flexible control over how the sets are aggregated, achieving tighter coverage bounds that interpolate between the 12α1-2\alpha guarantee of the combined models and the 1α1-\alpha guarantee of an individual model depending on the distribution of weights. We extend our framework to data-dependent weights, and we derive a general procedure for data-dependent weight aggregation that maintains finite-sample validity. We demonstrate the effectiveness of our methods through experiments on synthetic and real data in the mixture-of-experts setting, and we show that aggregation with data-dependent weights provides a form of adaptive coverage.

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@article{wong2025_2505.11785,
  title={ Improving Coverage in Combined Prediction Sets with Weighted p-values },
  author={ Gina Wong and Drew Prinster and Suchi Saria and Rama Chellappa and Anqi Liu },
  journal={arXiv preprint arXiv:2505.11785},
  year={ 2025 }
}
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