Seven Steps Toward More Transparency in Statistical Practice
Autor: | Casper J. Albers, Franziska A. Stanke, Štěpán Bahník, Jorge N. Tendeiro, Balazs Aczel, Alexandra Sarafoglou, David Moreau, Rink Hoekstra, Don van Ravenzwaaij, Noah van Dongen, Sil Aarts, Eric-Jan Wagenmakers, Aljaž Sluga, Johannes Algermissen |
---|---|
Přispěvatelé: | Psychometrics and Statistics, Research and Evaluation of Educational Effectiveness, RS: CAPHRI - R1 - Ageing and Long-Term Care, Health Services Research |
Rok vydání: | 2021 |
Předmět: |
MetaArXiv|Social and Behavioral Sciences|Political Science
Social Psychology bepress|Social and Behavioral Sciences|Economics Statistics as Topic Acknowledgement Behavioural sciences Experimental and Cognitive Psychology TABLES GRAPHS bepress|Social and Behavioral Sciences|Political Science Ethos Behavioral Neuroscience MetaArXiv|Social and Behavioral Sciences|Other Social and Behavioral Sciences bepress|Social and Behavioral Sciences|Social Statistics Openness to experience Statistical inference Humans Positive economics Universalism bepress|Social and Behavioral Sciences|Other Social and Behavioral Sciences bepress|Social and Behavioral Sciences|Psychology MetaArXiv|Social and Behavioral Sciences Models Statistical Information Dissemination Action intention and motor control MetaArXiv|Social and Behavioral Sciences|Social Statistics Uncertainty Common ground Transparency (behavior) TRIALS Research Design MetaArXiv|Social and Behavioral Sciences|Economics MetaArXiv|Social and Behavioral Sciences|Psychology Data Interpretation Statistical bepress|Social and Behavioral Sciences VISUALIZATION Psychology |
Zdroj: | Nature Human Behaviour, 5, 1473-1480. Nature Publishing Group Nature Human Behaviour, 5, 11, pp. 1473-1480 Nature human behaviour, 5(11), 1473-1480. Nature Publishing Group ORCID MetaArXiv Nature Human Behaviour, 5, 1473-1480 |
ISSN: | 2397-3374 |
Popis: | We argue that statistical practice in the social and behavioural sciences benefits from transparency, a fair acknowledgement of uncertainty and openness to alternative interpretations. Here, to promote such a practice, we recommend seven concrete statistical procedures: (1) visualizing data; (2) quantifying inferential uncertainty; (3) assessing data preprocessing choices; (4) reporting multiple models; (5) involving multiple analysts; (6) interpreting results modestly; and (7) sharing data and code. We discuss their benefits and limitations, and provide guidelines for adoption. Each of the seven procedures finds inspiration in Merton's ethos of science as reflected in the norms of communalism, universalism, disinterestedness and organized scepticism. We believe that these ethical considerations-as well as their statistical consequences-establish common ground among data analysts, despite continuing disagreements about the foundations of statistical inference.Wagenmakers and colleagues describe seven statistical procedures that increase transparency in data analysis. These procedures highlight common ground among data analysts from different schools and find inspiration in Merton's ethos of science. |
Databáze: | OpenAIRE |
Externí odkaz: |