Statistical Decisions Using Likelihood Information Without Prior Probabilities

12/12/2012
by   Phan H. Giang, et al.
0

This paper presents a decision-theoretic approach to statistical inference that satisfies the likelihood principle (LP) without using prior information. Unlike the Bayesian approach, which also satisfies LP, we do not assume knowledge of the prior distribution of the unknown parameter. With respect to information that can be obtained from an experiment, our solution is more efficient than Wald's minimax solution.However, with respect to information assumed to be known before the experiment, our solution demands less input than the Bayesian solution.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/23/2020

Flexible Prior Elicitation via the Prior Predictive Distribution

The prior distribution for the unknown model parameters plays a crucial ...
research
03/30/2023

A possibility-theoretic solution to Basu's Bayesian–frequentist via media

Basu's via media is what he referred to as the middle road between the B...
research
09/08/2020

Qualitative Robust Bayesianism and the Likelihood Principle

We argue that the likelihood principle (LP) and weak law of likelihood (...
research
06/11/2022

Mathematical Theory of Bayesian Statistics for Unknown Information Source

In statistical inference, uncertainty is unknown and all models are wron...
research
12/23/2019

A Bayesian Application in Judicial Decisions

This paper presents a new tool to support the decision concerning moral ...
research
06/02/2015

An objective prior that unifies objective Bayes and information-based inference

There are three principle paradigms of statistical inference: (i) Bayesi...
research
05/17/2023

Bayesian Renormalization

In this note we present a fully information theoretic approach to renorm...

Please sign up or login with your details

Forgot password? Click here to reset