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Main Authors: Yoshioka, Masaki, Tanaka, Fuyuhiko
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.21363
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author Yoshioka, Masaki
Tanaka, Fuyuhiko
author_facet Yoshioka, Masaki
Tanaka, Fuyuhiko
contents In Bayesian statistics, the selection of noninformative priors is a crucial issue. There have been various discussions on theoretical justification, problems with the Jeffreys prior, and alternative objective priors. Among them, we focus on two types of matching priors consistent with frequentist theory: the probability matching priors and the moment matching priors. In particular, no clear relationship has been established between these two types of priors on non-regular statistical models, even though they share similar objectives. Considering information geometry on a one-sided truncated exponential family, a typical example of non-regular statistical models, we find that the Lie derivative along a particular vector field provides the conditions for both the probability and moment matching priors. Notably, this Lie derivative does not appear in regular models. These conditions require the invariance of a generalized volume element with respect to differentiation along the non-regular parameter. This invariance leads to a suitable decomposition of the one-sided truncated exponential family into one-dimensional submodels. This result promotes a unified understanding of probability and moment matching priors on non-regular models.
format Preprint
id arxiv_https___arxiv_org_abs_2504_21363
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The differential structure shared by probability and moment matching priors on non-regular statistical models via the Lie derivative
Yoshioka, Masaki
Tanaka, Fuyuhiko
Statistics Theory
Primary 62F15, Secondary 62B11
In Bayesian statistics, the selection of noninformative priors is a crucial issue. There have been various discussions on theoretical justification, problems with the Jeffreys prior, and alternative objective priors. Among them, we focus on two types of matching priors consistent with frequentist theory: the probability matching priors and the moment matching priors. In particular, no clear relationship has been established between these two types of priors on non-regular statistical models, even though they share similar objectives. Considering information geometry on a one-sided truncated exponential family, a typical example of non-regular statistical models, we find that the Lie derivative along a particular vector field provides the conditions for both the probability and moment matching priors. Notably, this Lie derivative does not appear in regular models. These conditions require the invariance of a generalized volume element with respect to differentiation along the non-regular parameter. This invariance leads to a suitable decomposition of the one-sided truncated exponential family into one-dimensional submodels. This result promotes a unified understanding of probability and moment matching priors on non-regular models.
title The differential structure shared by probability and moment matching priors on non-regular statistical models via the Lie derivative
topic Statistics Theory
Primary 62F15, Secondary 62B11
url https://arxiv.org/abs/2504.21363