p-Values for Credibility

12/08/2017
by   Leonhard Held, et al.
0

Analysis of credibility is a reverse-Bayes technique that has been proposed by Matthews (2001) to overcome some of the shortcomings of significance tests. A significant result is deemed credible if current knowledge about the effect size is in conflict with any sceptical prior that would make the effect non-significant. In this paper I formalize the approach and propose to use Bayesian predictive tail probabilities to quantify the evidence for credibility. This gives rise to a p-value for extrinsic credibility, taking into account both the internal and the external evidence for an effect. The assessment of intrinsic credibility leads to a new threshold for ordinary significance that is remarkably close to the recently proposed 0.005 level. Finally, a p-value for intrinsic credibility is proposed that is a simple function of the ordinary p-value for significance and has a direct frequentist interpretation in terms of the replication probability that a future study under identical conditions will give an estimated effect in the same direction as the first study.

READ FULL TEXT

page 16

page 17

research
03/27/2018

A New Argument for p<0.005

Analysis of Credibility is a reverse-Bayes technique that has been propo...
research
11/26/2018

A New Standard for the Analysis and Design of Replication Studies

A new standard is proposed for the evidential assessment of replication ...
research
09/03/2020

The sceptical Bayes factor for the assessment of replication success

There is an urgent need to develop new methodology for the design and an...
research
07/01/2022

A Statistical Framework for Replicability

We introduce a novel statistical framework to study replicability which ...
research
07/27/2020

The look-elsewhere effect from a unified Bayesian and frequentist perspective

When searching over a large parameter space for anomalies such as events...
research
08/17/2020

Presenting the Probabilities of Different Effect Sizes: Towards a Better Understanding and Communication of Statistical Uncertainty

How should social scientists understand and communicate the uncertainty ...

Please sign up or login with your details

Forgot password? Click here to reset