» Articles » PMID: 32598854

The Multiverse of Methods: Extending the Multiverse Analysis to Address Data-Collection Decisions

Overview
Specialty Psychology
Date 2020 Jun 30
PMID 32598854
Citations 18
Authors
Affiliations
Soon will be listed here.
Abstract

When analyzing data, researchers may have multiple reasonable options for the many decisions they must make about the data-for example, how to code a variable or which participants to exclude. Therefore, there exists a of possible data sets. A classic multiverse analysis involves performing a given analysis on every potential data set in this multiverse to examine how each data decision affects the results. However, a limitation of the multiverse analysis is that it addresses only data cleaning and analytic decisions, yet researcher decisions that affect results also happen at the data-collection stage. I propose an adaptation of the multiverse method in which the multiverse of data sets is composed of real data sets from studies varying in data-collection methods of interest. I walk through an example analysis applying the approach to 19 studies on shooting decisions to demonstrate the usefulness of this approach and conclude with a further discussion of the limitations and applications of this method.

Citing Articles

On the pursuit of reproducibility: the importance of large sample sizes in psychoimmunology.

Rengasamy M, Moriarity D, Price R Transl Psychiatry. 2025; 15(1):29.

PMID: 39863607 PMC: 11762288. DOI: 10.1038/s41398-025-03244-3.


The replication crisis has led to positive structural, procedural, and community changes.

Korbmacher M, Azevedo F, Pennington C, Hartmann H, Pownall M, Schmidt K Commun Psychol. 2024; 1(1):3.

PMID: 39242883 PMC: 11290608. DOI: 10.1038/s44271-023-00003-2.


Physiological and communicative emotional disconcordance in children on the autism spectrum.

Finkel E, Sah E, Spaulding M, Herrington J, Tomczuk L, Masino A J Neurodev Disord. 2024; 16(1):51.

PMID: 39232680 PMC: 11373183. DOI: 10.1186/s11689-024-09567-4.


Epidemic outcomes following government responses to COVID-19: Insights from nearly 100,000 models.

Bendavid E, Patel C Sci Adv. 2024; 10(23):eadn0671.

PMID: 38838157 PMC: 11152132. DOI: 10.1126/sciadv.adn0671.


Optimal processing of surface facial EMG to identify emotional expressions: A data-driven approach.

Rutkowska J, Ghilardi T, Vacaru S, van Schaik J, Meyer M, Hunnius S Behav Res Methods. 2024; 56(7):7331-7344.

PMID: 38773029 PMC: 11362446. DOI: 10.3758/s13428-024-02421-4.