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Objective Bayes and conditional inference in exponential families
by
YOUNG, G. ALASTAIR
, DICICCIO, THOMAS J.
in
Analytics
/ Applications
/ Approximation
/ Bayesian analysis
/ Biology, psychology, social sciences
/ Bootstrap method
/ Conditional inference
/ Conditional probabilities
/ Confidence limits
/ Exact sciences and technology
/ Frequentism
/ Full exponential family
/ General topics
/ Inference
/ Mathematical independent variables
/ Mathematics
/ Miscellanea
/ Nuisance parameter
/ Objective Bayes inference
/ Parameter estimation
/ Parametric inference
/ Probabilities
/ Probability and statistics
/ Probability distribution
/ Probability matching
/ Sampling distributions
/ Sampling theory, sample surveys
/ Sciences and techniques of general use
/ Signed root likelihood ratio statistic
/ Statistical inference
/ Statistics
/ Studies
2010
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Objective Bayes and conditional inference in exponential families
by
YOUNG, G. ALASTAIR
, DICICCIO, THOMAS J.
in
Analytics
/ Applications
/ Approximation
/ Bayesian analysis
/ Biology, psychology, social sciences
/ Bootstrap method
/ Conditional inference
/ Conditional probabilities
/ Confidence limits
/ Exact sciences and technology
/ Frequentism
/ Full exponential family
/ General topics
/ Inference
/ Mathematical independent variables
/ Mathematics
/ Miscellanea
/ Nuisance parameter
/ Objective Bayes inference
/ Parameter estimation
/ Parametric inference
/ Probabilities
/ Probability and statistics
/ Probability distribution
/ Probability matching
/ Sampling distributions
/ Sampling theory, sample surveys
/ Sciences and techniques of general use
/ Signed root likelihood ratio statistic
/ Statistical inference
/ Statistics
/ Studies
2010
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Do you wish to request the book?
Objective Bayes and conditional inference in exponential families
by
YOUNG, G. ALASTAIR
, DICICCIO, THOMAS J.
in
Analytics
/ Applications
/ Approximation
/ Bayesian analysis
/ Biology, psychology, social sciences
/ Bootstrap method
/ Conditional inference
/ Conditional probabilities
/ Confidence limits
/ Exact sciences and technology
/ Frequentism
/ Full exponential family
/ General topics
/ Inference
/ Mathematical independent variables
/ Mathematics
/ Miscellanea
/ Nuisance parameter
/ Objective Bayes inference
/ Parameter estimation
/ Parametric inference
/ Probabilities
/ Probability and statistics
/ Probability distribution
/ Probability matching
/ Sampling distributions
/ Sampling theory, sample surveys
/ Sciences and techniques of general use
/ Signed root likelihood ratio statistic
/ Statistical inference
/ Statistics
/ Studies
2010
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Objective Bayes and conditional inference in exponential families
Journal Article
Objective Bayes and conditional inference in exponential families
2010
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Overview
Objective Bayes methodology is considered for conditional frequentist inference about a canonical parameter in a multi-parameter exponential family. A condition is derived under which posterior Bayes quantiles match the conditional frequentist coverage to a higher-order approximation in terms of the sample size. This condition is on the model, not on the prior, and it ensures that any first-order probability matching prior in the unconditional sense automatically yields higher-order conditional probability matching. Objective Bayes methods are compared to parametric bootstrap and analytic methods for higher-order conditional frequentist inference.
Publisher
Oxford University Press,Biometrika Trust, University College London,Oxford University Press for Biometrika Trust,Oxford Publishing Limited (England)
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