A Bayesian model-averaged meta-analysis of the power pose effect with informed and default priors: the case of felt power
Gronau, Q.F.; Van Erp, S.; Heck, D.W.; Cesario, J.; Jonas, K.J.; Wagenmakers, E.
Comprehensive Results in Social Psychology 2(1): 123-138
2017
ISSN/ISBN: 2374-3603 DOI: 10.1080/23743603.2017.1326760
Accession: 080948949
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