A tutorial on Bayesian single-test reliability analysis with JASP

被引:0
作者
Julius M. Pfadt
Don van den Bergh
Klaas Sijtsma
Eric-Jan Wagenmakers
机构
[1] University of Ulm,Department of Psychological Research Methods
[2] University of Amsterdam,Department of Psychological Methods
[3] Tilburg University,Department of Methodology and Statistics
来源
Behavior Research Methods | 2023年 / 55卷
关键词
Credible interval; McDonald’s omega;
D O I
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中图分类号
学科分类号
摘要
The current practice of reliability analysis is both uniform and troublesome: most reports consider only Cronbach’s α, and almost all reports focus exclusively on a point estimate, disregarding the impact of sampling error. In an attempt to improve the status quo we have implemented Bayesian estimation routines for five popular single-test reliability coefficients in the open-source statistical software program JASP. Using JASP, researchers can easily obtain Bayesian credible intervals to indicate a range of plausible values and thereby quantify the precision of the point estimate. In addition, researchers may use the posterior distribution of the reliability coefficients to address practically relevant questions such as “What is the probability that the reliability of my test is larger than a threshold value of .80?”. In this tutorial article, we outline how to conduct a Bayesian reliability analysis in JASP and correctly interpret the results. By making available a computationally complex procedure in an easy-to-use software package, we hope to motivate researchers to include uncertainty estimates whenever reporting the results of a single-test reliability analysis.
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页码:1069 / 1078
页数:9
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