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A meta-analytic approach to evaluating the explanatory adequacy of theories

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Bergmann,  Christina
Language Development Department, MPI for Psycholinguistics, Max Planck Society;

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Citation

Cristia, A., Tsuji, S., & Bergmann, C. (2022). A meta-analytic approach to evaluating the explanatory adequacy of theories. Meta-Psychology, 6: MP.2020.2741. doi:10.15626/MP.2020.2741.


Cite as: https://hdl.handle.net/21.11116/0000-0006-AE06-0
Abstract
How can data be used to check theories’ explanatory adequacy? The two traditional and most widespread approaches use single studies and non-systematic narrative reviews to evaluate theories’ explanatory adequacy; more
recently, large-scale replications entered the picture. We argue here that none of these approaches fits in with
cumulative science tenets. We propose instead Community-Augmented Meta-Analyses (CAMAs), which, like metaanalyses and systematic reviews, are built using all available data; like meta-analyses but not systematic reviews, can
rely on sound statistical practices to model methodological effects; and like no other approach, are broad-scoped,
cumulative and open. We explain how CAMAs entail a conceptual shift from meta-analyses and systematic reviews, a
shift that is useful when evaluating theories’ explanatory adequacy. We then provide step-by-step recommendations
for how to implement this approach – and what it means when one cannot. This leads us to conclude that CAMAs
highlight areas of uncertainty better than alternative approaches that bring data to bear on theory evaluation, and
can trigger a much needed shift towards a cumulative mindset with respect to both theory and data, leading us to
do and view experiments and narrative reviews differently.