We revisit the question of priors that achieve approximate matching of Bayesian and frequentist predictive probabilities. Such priors may be thought of as providing frequentist calibration of Bayesian prediction or simply as devices for producing frequentist prediction regions. Here we analyse the $O(n^{-1})$ term in the expansion of the coverage probability of a Bayesian prediction region, as derived in [Ann. Statist. 28 (2000) 1414--1426]. Unlike the situation for parametric matching, asymptotic predictive matching priors may depend on the level $\alpha$. We investigate uniformly predictive matching priors (UPMPs); that is, priors for which this $O(n^{-1})$ term is zero for all $\alpha$. It was shown in [Ann. Statist. 28 (2000) 1414--1426...
It has long been asserted that in univariate location-scale models, when concerned with inference fo...
The behavior of many Bayesian models used in machine learning critically depends on the choice of pr...
Let us consider a random vector Y distributed according to a statistical model depending on an unkno...
In recent years, extensive work has been done concerning the derivation of noninformative prior dist...
this paper, we consider the approach of matching. The notion of matching, which first appeared in We...
grantor: University of TorontoIn this thesis we consider various aspects of asymptotic the...
For models characterized by a scalar parameter, it is well known that Jeffrey's prior ensures approx...
A matching prior at level $1-\alpha$ is a prior such that an associated $1-\alpha$ credible set is a...
The paper considers priors which are right invariant with respect to the Haar measure. It is shown t...
Objective Bayesian methods have garnered considerable interest and support among statisticians, par...
Probability matching priors (PMPs) provide a bridge between Bayesian and frequentist inference by yi...
International audienceLaplace's "add-one" rule of succession modifies the observed frequencies in a ...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
The characterization of models and priors through a predictive approach is a fundamental problem in...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...
It has long been asserted that in univariate location-scale models, when concerned with inference fo...
The behavior of many Bayesian models used in machine learning critically depends on the choice of pr...
Let us consider a random vector Y distributed according to a statistical model depending on an unkno...
In recent years, extensive work has been done concerning the derivation of noninformative prior dist...
this paper, we consider the approach of matching. The notion of matching, which first appeared in We...
grantor: University of TorontoIn this thesis we consider various aspects of asymptotic the...
For models characterized by a scalar parameter, it is well known that Jeffrey's prior ensures approx...
A matching prior at level $1-\alpha$ is a prior such that an associated $1-\alpha$ credible set is a...
The paper considers priors which are right invariant with respect to the Haar measure. It is shown t...
Objective Bayesian methods have garnered considerable interest and support among statisticians, par...
Probability matching priors (PMPs) provide a bridge between Bayesian and frequentist inference by yi...
International audienceLaplace's "add-one" rule of succession modifies the observed frequencies in a ...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
The characterization of models and priors through a predictive approach is a fundamental problem in...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...
It has long been asserted that in univariate location-scale models, when concerned with inference fo...
The behavior of many Bayesian models used in machine learning critically depends on the choice of pr...
Let us consider a random vector Y distributed according to a statistical model depending on an unkno...