Bayesian versus frequentist approaches in multilevel single-case designs: on type I error rate and power [Author Accepted Manuscript]
Author(s) / Creator(s)
Rodríguez-Prada, Cristina
Martínez-Huertas, José Ángel
Olmos, Ricardo
Abstract / Description
Single-case designs (SCEDs) assess intervention effects through repeated measurements on one or a few individuals. Multilevel models nest repeated measures within individuals and have gained popularity for inferential analysis in SCEDs, in combination with expert knowledge of the clinicians and applied researchers. However, researchers often face model specification challenges without knowing the true population model underlying their data. This study evaluates how model selection criteria (AIC, BIC, WAIC, LOO) conditioned on the selected model impact statistical power and Type I error rates in intervention effects, reflecting the ecological reality where practitioners do not know the true model. A Monte Carlo simulation modelled data of AB designs varying sample size, measurement points, intervention effects, and random effect structures. Results indicated that frequentist criteria performed well in simpler models in terms of power, while Bayesian approaches showed greater robustness with respect to Type I error control. The findings provide practical insights on multilevel model selection under real-world conditions, highlighting Bayesian methods as a robust alternative for applied researchers handling small sample sizes and complex data structures.
Keyword(s)
Single-Case Designs Multilevel Analysis Bayesian Statistics Frequentist Analysis Statistical Power Type I Error RatePersistent Identifier
Date of first publication
2026-01-16
Journal title
Methodology
Publisher
PsychArchives
Publication status
acceptedVersion
Review status
reviewed
Is version of
Citation
Rodríguez-Prada, C., Martínez-Huertas, J. Á., & Olmos, R. (in press). Bayesian versus frequentist approaches in multilevel single-case designs: on type I error rate and power [Author Accepted Manuscript]. Methodology. https://doi.org/10.23668/psycharchives.21581
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Rodríguez-Prada_et_al_2026_Bayesian_vs_frquentist_approaches_in_multilevel_SCEDs_METH_AAM.pdfAdobe PDF - 1.05MBMD5 : 5d2942437336e848e10504e0f80ce10bDescription: Accepted Manuscript
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Author(s) / Creator(s)Rodríguez-Prada, Cristina
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Author(s) / Creator(s)Martínez-Huertas, José Ángel
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Author(s) / Creator(s)Olmos, Ricardo
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PsychArchives acquisition timestamp2026-01-16T13:22:23Z
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Made available on2026-01-16T13:22:23Z
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Date of first publication2026-01-16
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Abstract / DescriptionSingle-case designs (SCEDs) assess intervention effects through repeated measurements on one or a few individuals. Multilevel models nest repeated measures within individuals and have gained popularity for inferential analysis in SCEDs, in combination with expert knowledge of the clinicians and applied researchers. However, researchers often face model specification challenges without knowing the true population model underlying their data. This study evaluates how model selection criteria (AIC, BIC, WAIC, LOO) conditioned on the selected model impact statistical power and Type I error rates in intervention effects, reflecting the ecological reality where practitioners do not know the true model. A Monte Carlo simulation modelled data of AB designs varying sample size, measurement points, intervention effects, and random effect structures. Results indicated that frequentist criteria performed well in simpler models in terms of power, while Bayesian approaches showed greater robustness with respect to Type I error control. The findings provide practical insights on multilevel model selection under real-world conditions, highlighting Bayesian methods as a robust alternative for applied researchers handling small sample sizes and complex data structures.en
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Publication statusacceptedVersion
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Review statusreviewed
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SponsorshipCRP was supported by the “Ayudas al Fomento de la Investigación en Másteres Oficiales 2019-2020” and “Ayudas al Fomento de la Investigación en Másteres Oficiales 2020-2021” by the Universidad Autónoma de Madrid. CRP is also supported by “Contratos predoctorales para la Formación de Personal Investigador FPI-UAM 2022”, Universidad Autónoma de Madrid, Spain.
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CitationRodríguez-Prada, C., Martínez-Huertas, J. Á., & Olmos, R. (in press). Bayesian versus frequentist approaches in multilevel single-case designs: on type I error rate and power [Author Accepted Manuscript]. Methodology. https://doi.org/10.23668/psycharchives.21581
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ISSN1614-2241
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Persistent Identifierhttps://hdl.handle.net/20.500.12034/16965
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Persistent Identifierhttps://doi.org/10.23668/psycharchives.21581
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Language of contenteng
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PublisherPsychArchives
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Is version ofhttps://doi.org/10.5964/meth.17715
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Is related tohttps://osf.io/k7b82/overview
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Is related tohttps://github.com/Cristrinaranjus/phdthesis/releases/tag/methodology-journal
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Keyword(s)Single-Case Designs
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Keyword(s)Multilevel Analysis
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Keyword(s)Bayesian Statistics
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Keyword(s)Frequentist Analysis
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Keyword(s)Statistical Power
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Keyword(s)Type I Error Rate
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Dewey Decimal Classification number(s)150
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TitleBayesian versus frequentist approaches in multilevel single-case designs: on type I error rate and power [Author Accepted Manuscript]en
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DRO typearticle
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Journal titleMethodology
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Visible tag(s)PsychOpen GOLD
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Visible tag(s)Accepted Manuscript