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The JASP guidelines for conducting and reporting a Bayesian analysis.

Johnny van Doorn1, Don van den Bergh2, Udo Böhm2

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Summary
This summary is machine-generated.

This study provides practical guidelines for applying Bayesian inference in research. It covers planning, executing, interpreting, and reporting Bayesian analyses for better empirical results.

Keywords:
Bayesian inferenceScientific reportingStatistical software

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Area of Science:

  • Statistics
  • Empirical Research Methods

Background:

  • Bayesian inference is increasingly popular in empirical research.
  • There is a lack of practical guidelines for applying and interpreting Bayesian procedures.

Purpose of the Study:

  • To offer specific guidelines for Bayesian statistical reasoning in research.
  • To cover four key stages: planning, execution, interpretation, and reporting of analyses.

Main Methods:

  • The study provides a running example to illustrate guidelines.
  • Guidelines are geared towards the JASP software but are broadly applicable.

Main Results:

  • Detailed recommendations are provided for each stage of Bayesian analysis.
  • The guidelines aim to facilitate the application and interpretation of Bayesian methods.

Conclusions:

  • These guidelines enhance the practical application of Bayesian inference.
  • Researchers can improve their empirical studies by following these recommendations.