Bayesian quantile estimation and regression with martingale posteriors
Bayesian quantile estimation and regression with martingale posteriors
Quantile estimation and regression within the Bayesian framework is challenging as the choice of likelihood and prior is not obvious. In this paper, we introduce a novel Bayesian nonparametric method for quantile estimation and regression based on the recently introduced martingale posterior (MP) framework. The core idea of the MP is that posterior sampling is equivalent to predictive imputation, which allows us to break free of the stringent likelihood-prior specification. We demonstrate that a recursive estimate of a smooth quantile function, subject to a martingale condition, is entirely sufficient for full nonparametric Bayesian inference. We term the resulting posterior distribution as the quantile martingale posterior (QMP), which arises from an implicit generative predictive distribution. Associated with the QMP is an expedient, MCMC-free and parallelizable posterior computation scheme, which can be further accelerated with an asymptotic approximation based on a Gaussian process. Furthermore, the well-known issue of monotonicity in quantile estimation is naturally alleviated through increasing rearrangement due to the connections to the Bayesian bootstrap. Finally, the QMP has a particularly tractable form that allows for comprehensive theoretical study, which forms a main focus of the work. We demonstrate the ease of posterior computation in simulations and real data experiments.
Fong, Edwin
68fbe09f-83e5-47b8-8152-88633fa2eee4
Yiu, Andrew
cd904c57-0174-4733-af7f-6d9e5c58f10a
16 December 2025
Fong, Edwin
68fbe09f-83e5-47b8-8152-88633fa2eee4
Yiu, Andrew
cd904c57-0174-4733-af7f-6d9e5c58f10a
Fong, Edwin and Yiu, Andrew
(2025)
Bayesian quantile estimation and regression with martingale posteriors.
Journal of the Royal Statistical Society. Series B: Methodological.
(doi:10.1093/jrsssb/qkaf080).
Abstract
Quantile estimation and regression within the Bayesian framework is challenging as the choice of likelihood and prior is not obvious. In this paper, we introduce a novel Bayesian nonparametric method for quantile estimation and regression based on the recently introduced martingale posterior (MP) framework. The core idea of the MP is that posterior sampling is equivalent to predictive imputation, which allows us to break free of the stringent likelihood-prior specification. We demonstrate that a recursive estimate of a smooth quantile function, subject to a martingale condition, is entirely sufficient for full nonparametric Bayesian inference. We term the resulting posterior distribution as the quantile martingale posterior (QMP), which arises from an implicit generative predictive distribution. Associated with the QMP is an expedient, MCMC-free and parallelizable posterior computation scheme, which can be further accelerated with an asymptotic approximation based on a Gaussian process. Furthermore, the well-known issue of monotonicity in quantile estimation is naturally alleviated through increasing rearrangement due to the connections to the Bayesian bootstrap. Finally, the QMP has a particularly tractable form that allows for comprehensive theoretical study, which forms a main focus of the work. We demonstrate the ease of posterior computation in simulations and real data experiments.
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qkaf080
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Accepted/In Press date: 26 November 2025
Published date: 16 December 2025
Identifiers
Local EPrints ID: 511020
URI: http://eprints.soton.ac.uk/id/eprint/511020
ISSN: 0035-9246
PURE UUID: 0cbd09a0-a93b-4c58-b342-19dcf53e1088
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Date deposited: 28 Apr 2026 17:04
Last modified: 28 Apr 2026 17:04
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Author:
Edwin Fong
Author:
Andrew Yiu
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