Suche nach Personen

plus im Publikationsserver
plus bei BASE
plus bei Google Scholar

Daten exportieren

 

Multicurious : A Multidisciplinary Guide to Multiverse Analysis

Titelangaben

Verfügbarkeit überprüfen

Short, Cassie Ann ; Breznau, Nate ; Bruntsch, Maria ; Burkhardt, Micha ; Busch, Niko A. ; Cesnaite, Elena ; Frank, Maximilian ; Gießing, Carsten ; Krähmer, Daniel ; Kristanto, Daniel ; Lonsdorf, Tina ; Neuendorf, Claudia ; Nguyen, Hung H. V. ; Rausch, Manuel ; Schmalz, Xenia ; Schneck, Andreas ; Tabakci, Cem ; Hildebrandt, Andrea:
Multicurious : A Multidisciplinary Guide to Multiverse Analysis.
In: Advances in Methods and Practices in Psychological Science. 9 (21. April 2026) 2.

Volltext

Open Access
[img]
Vorschau
Text (PDF)
Verfügbar unter folgender Lizenz: Creative Commons: Attribution 4.0 International (CC BY 4.0) Creative Commons: Namensnennung (CC BY 4.0) .

Download (1MB) | Vorschau
Volltext Link zum Volltext (externe URL):
https://doi.org/10.1177/25152459261434881

Kurzfassung/Abstract

Multiverse analysis offers a comprehensive response to a core vulnerability in empirical research: the uncertainty of scientific conclusions arising from defensible yet flexible data-processing and -analysis decisions. By systematically mapping and computing all or a sample of all plausible data-processing pipelines, multiverse analysis reports the robustness of findings across analytical flexibility and increases transparency in the research process. As its adoption grows across disciplines, so too does the need for clarity on how to design, report, and interpret multiverse results responsibly. In this article, we provide interdisciplinary guidance on key procedural considerations, including defensibility and equivalence evaluations, preregistration, and computational demands. We aim to harmonize terminology, promote best practices, and foster conceptual cohesion across fields, supported by reference to domain-specific resources when appropriate. By doing so, we contribute to the broader movement toward more robust, reproducible, and transparent science, one that not only reports results but also interrogates the analytical pipelines that produce them.

Weitere Angaben

Publikationsform:Artikel
Sprache des Eintrags:Englisch
Institutionen der Universität:Philosophisch-Pädagogische Fakultät > Psychologie > Lehrstuhl für Allgemeine Psychologie
DOI / URN / ID:10.1177/25152459261434881
Open Access: Freie Zugänglichkeit des Volltexts?:Ja
Peer-Review-Journal:Ja
Verlag:Sage Publications Inc
Titel an der KU entstanden:Ja
KU.edoc-ID:36833
Eingestellt am: 07. Jul 2026 08:46
Letzte Änderung: 07. Jul 2026 08:46
URL zu dieser Anzeige: https://edoc.ku.de/id/eprint/36833/
AnalyticsGoogle Scholar