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Federated Conformal Predictors for Distributed Uncertainty Quantification

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Conformal prediction is emerging as a popular paradigm for providing rigorous uncertainty quantification in machine learning since it can be easily applied as a post-processing step to already trained models. In this paper, we extend conformal prediction to the federated learning setting. The main challenge we face is data heterogeneity across the clients - this violates the fundamental tenet of exchangeability required for conformal prediction. We propose a weaker notion of partial exchangeability, better suited to the FL setting, and use it to develop the Federated Conformal Prediction (FCP) framework. We show FCP enjoys rigorous theoretical guarantees and excellent empirical performance on several computer vision and medical imaging datasets. Our results demonstrate a practical approach to incorporating meaningful uncertainty quantification in distributed and heterogeneous environments. We provide code used in our experiments https://github.com/clu5/federated-conformal.

Charles Lu, Yaodong Yu, Sai Praneeth Karimireddy, Michael I. Jordan, Ramesh Raskar• 2023

Related benchmarks

TaskDatasetResultRank
Conformal PredictionBlood cell microscopy
Coverage97
12
Conformal PredictionColon histopathology
Coverage94
12
Conformal PredictionAbdominal computed tomography
Coverage92
12
Conformal PredictionRetina fundus imaging
Coverage91
12
Conformal PredictionDematoscopic skin lesion
Coverage89
12
Conformal PredictionKidney tissue microscopy
Coverage90
12
Image ClassificationCIFAR-10 2009 (test)
Marginal Coverage90.2
7
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