Adaptative significance levels in linear regression models with known variance

The Full Bayesian Significance Test (FBST) for precise hypotheses was presented by Pereira and Stern [Entropy 1(4) (1999) 99-110] as a Bayesian alternative instead of the traditional significance test using p-value. The FBST is based on the evidence in favor of the null hypothesis (H). An important practical issue for the implementation of the FBST is the determination of how large the evidence must be in order to decide for its rejection. In the Classical significance tests, it is known that p-value decreases as sample size increases, so by setting a single significance level, it usually leads H rejection. In the FBST procedure, the evidence in favor of H exhibits the same behavior as the p-value when the sample size increases. This suggests that the cut-off point to define the rejection of H in the FBST should be a sample size function. In this work, the scenario of Linear Regression Models with known variance under the Bayesian approach is considered, and a method to find a cut-off value for the evidence in the FBST is presented by minimizing the linear combination of the averaged type I and type II error probabilities for a given sample size and also for a given dimension of the parametric space.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/29/2018

Adaptative significance levels in normal mean hypothesis testing

The Full Bayesian Significance Test (FBST) for precise hypotheses was pr...
research
06/23/2020

An improved sample size calculation method for score tests in generalized linear models

Self and Mauritsen (1988) developed a sample size determination procedur...
research
02/08/2019

Accounting for Significance and Multicollinearity in Building Linear Regression Models

We derive explicit Mixed Integer Optimization (MIO) constraints, as oppo...
research
08/15/2022

Predictive Data Calibration for Linear Correlation Significance Testing

Inferring linear relationships lies at the heart of many empirical inves...
research
10/28/2022

The non-significance factor is a simple posterior estimate of the minimum necessary sample size

A researcher is interested in what sample size is needed to get the requ...
research
05/16/2022

The e-value and the Full Bayesian Significance Test: Logical Properties and Philosophical Consequences

This article gives a conceptual review of the e-value, ev(H|X) – the epi...

Please sign up or login with your details

Forgot password? Click here to reset