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Main Authors: Zhang, Boning, Zecchin, Matteo, Guo, Mingzhao, Liu, Dongzhu, Simeone, Osvaldo
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.18554
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author Zhang, Boning
Zecchin, Matteo
Guo, Mingzhao
Liu, Dongzhu
Simeone, Osvaldo
author_facet Zhang, Boning
Zecchin, Matteo
Guo, Mingzhao
Liu, Dongzhu
Simeone, Osvaldo
contents Federated Bayesian neural networks require fixing a prior on the model parameters together with a likelihood. Eliciting meaningful priors on the weight space of modern overparameterized models is notoriously difficult, and misspecification of either component can severely degrade accuracy and calibration. Motivated by the rapid progress of predictive models such as large language models, the martingale posterior, also known as predictive Bayes, replaces the prior--likelihood pair with a predictive distribution and recovers parameter uncertainty by repeatedly drawing predictive samples and refitting the model. A direct federated implementation, however, would require clients to share the local data sets. This letter proposes {federated martingale posterior} (FMP) sampling, a one-shot embarrassingly parallel protocol in which each client uploads a small set of trainable data embeddings and the server runs the predictive sampler centrally. Experiments on MNIST, CIFAR-10, and CIFAR-100 show that FMP closely matches the centralized counterpart and significantly improves calibration over consensus-style baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2605_18554
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Federated Martingale Posterior Samping
Zhang, Boning
Zecchin, Matteo
Guo, Mingzhao
Liu, Dongzhu
Simeone, Osvaldo
Machine Learning
Federated Bayesian neural networks require fixing a prior on the model parameters together with a likelihood. Eliciting meaningful priors on the weight space of modern overparameterized models is notoriously difficult, and misspecification of either component can severely degrade accuracy and calibration. Motivated by the rapid progress of predictive models such as large language models, the martingale posterior, also known as predictive Bayes, replaces the prior--likelihood pair with a predictive distribution and recovers parameter uncertainty by repeatedly drawing predictive samples and refitting the model. A direct federated implementation, however, would require clients to share the local data sets. This letter proposes {federated martingale posterior} (FMP) sampling, a one-shot embarrassingly parallel protocol in which each client uploads a small set of trainable data embeddings and the server runs the predictive sampler centrally. Experiments on MNIST, CIFAR-10, and CIFAR-100 show that FMP closely matches the centralized counterpart and significantly improves calibration over consensus-style baselines.
title Federated Martingale Posterior Samping
topic Machine Learning
url https://arxiv.org/abs/2605.18554