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Workflow techniques for the robust use of bayes factors

  • Inferences about hypotheses are ubiquitous in the cognitive sciences. Bayes factors provide one general way to compare different hypotheses by their compatibility with the observed data. Those quantifications can then also be used to choose between hypotheses. While Bayes factors provide an immediate approach to hypothesis testing, they are highly sensitive to details of the data/model assumptions and it's unclear whether the details of the computational implementation (such as bridge sampling) are unbiased for complex analyses. Hem, we study how Bayes factors misbehave under different conditions. This includes a study of errors in the estimation of Bayes factors; the first-ever use of simulation-based calibration to test the accuracy and bias of Bayes factor estimates using bridge sampling; a study of the stability of Bayes factors against different MCMC draws and sampling variation in the data; and a look at the variability of decisions based on Bayes factors using a utility function. We outline a Bayes factor workflow thatInferences about hypotheses are ubiquitous in the cognitive sciences. Bayes factors provide one general way to compare different hypotheses by their compatibility with the observed data. Those quantifications can then also be used to choose between hypotheses. While Bayes factors provide an immediate approach to hypothesis testing, they are highly sensitive to details of the data/model assumptions and it's unclear whether the details of the computational implementation (such as bridge sampling) are unbiased for complex analyses. Hem, we study how Bayes factors misbehave under different conditions. This includes a study of errors in the estimation of Bayes factors; the first-ever use of simulation-based calibration to test the accuracy and bias of Bayes factor estimates using bridge sampling; a study of the stability of Bayes factors against different MCMC draws and sampling variation in the data; and a look at the variability of decisions based on Bayes factors using a utility function. We outline a Bayes factor workflow that researchers can use to study whether Bayes factors are robust for their individual analysis. Reproducible code is available from haps://osf.io/y354c/. <br /> Translational Abstract <br /> In psychology and related areas, scientific hypotheses are commonly tested by asking questions like "is [some] effect present or absent." Such hypothesis testing is most often carried out using frequentist null hypothesis significance testing (NIIST). The NHST procedure is very simple: It usually returns a p-value, which is then used to make binary decisions like "the effect is present/abscnt." For example, it is common to see studies in the media that draw simplistic conclusions like "coffee causes cancer," or "coffee reduces the chances of geuing cancer." However, a powerful and more nuanced alternative approach exists: Bayes factors. Bayes factors have many advantages over NHST. However, for the complex statistical models that arc commonly used for data analysis today, computing Bayes factors is not at all a simple matter. In this article, we discuss the main complexities associated with computing Bayes factors. This is the first article to provide a detailed workflow for understanding and computing Bayes factors in complex statistical models. The article provides a statistically more nuanced way to think about hypothesis testing than the overly simplistic tendency to declare effects as being "present" or "absent".show moreshow less

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Author details:Daniel SchadORCiDGND, Bruno NicenboimORCiDGND, Paul-Christian BürknerORCiDGND, Michael BetancourtORCiD, Shravan VasishthORCiDGND
DOI:https://doi.org/10.1037/met0000472
ISSN:1082-989X
ISSN:1939-1463
Pubmed ID:https://pubmed.ncbi.nlm.nih.gov/35266787
Title of parent work (English):Psychological methods
Publisher:American Psychological Association
Place of publishing:Washington
Publication type:Article
Language:English
Date of first publication:2022/01/01
Publication year:2022
Release date:2024/05/17
Tag:Bayes factors; Bayesian model comparison; posterior; prior; simulation-based calibration
Volume:28
Issue:6
Number of pages:24
First page:1404
Last Page:1426
Funding institution:Deutsche Forschungsgemeinschaft (DFG, German Research Foundation); [317633480, SFB 1287]; Deutsche Forschungsgemeinschaft (DFG, German; Research Foundation) under Germany's Excellence Strategy - EXC [2075 -; 3907 40016]
Organizational units:Humanwissenschaftliche Fakultät / Strukturbereich Kognitionswissenschaften / Department Linguistik
DDC classification:1 Philosophie und Psychologie / 15 Psychologie / 150 Psychologie
4 Sprache / 41 Linguistik / 410 Linguistik
Peer review:Referiert
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