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Main Authors: Williams, Jonathan P, Liu, Yang
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.10458
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author Williams, Jonathan P
Liu, Yang
author_facet Williams, Jonathan P
Liu, Yang
contents Building on the recent development of the model-free generalized fiducial (MFGF) paradigm (Williams, 2023) for predictive inference with finite-sample frequentist validity guarantees, in this paper, we develop an MFGF-based approach to decision theory. Beyond the utility of the new tools we contribute to the field of decision theory, our work establishes a formal connection between decision theories from the perspectives of fiducial inference, conformal prediction, and imprecise probability theory. In our paper, we establish pointwise and uniform consistency of an {\em MFGF upper risk function} as an approximation to the true risk function via the derivation of nonasymptotic concentration bounds, and our work serves as the foundation for future investigations of the properties of the MFGF upper risk from the perspective of new decision-theoretic, finite-sample validity criterion, as in Martin (2021).
format Preprint
id arxiv_https___arxiv_org_abs_2405_10458
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Decision theory via model-free generalized fiducial inference
Williams, Jonathan P
Liu, Yang
Statistics Theory
Building on the recent development of the model-free generalized fiducial (MFGF) paradigm (Williams, 2023) for predictive inference with finite-sample frequentist validity guarantees, in this paper, we develop an MFGF-based approach to decision theory. Beyond the utility of the new tools we contribute to the field of decision theory, our work establishes a formal connection between decision theories from the perspectives of fiducial inference, conformal prediction, and imprecise probability theory. In our paper, we establish pointwise and uniform consistency of an {\em MFGF upper risk function} as an approximation to the true risk function via the derivation of nonasymptotic concentration bounds, and our work serves as the foundation for future investigations of the properties of the MFGF upper risk from the perspective of new decision-theoretic, finite-sample validity criterion, as in Martin (2021).
title Decision theory via model-free generalized fiducial inference
topic Statistics Theory
url https://arxiv.org/abs/2405.10458