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. Author manuscript; available in PMC: 2021 Feb 1.
Published in final edited form as: Neuroimage. 2019 Nov 5;206:116320. doi: 10.1016/j.neuroimage.2019.116320

Table 1.

Comparisons of assumptions and properties of massively univariate analysis and Bayesian multilevel modeling.

Massively Univariate Analysis Bayesian Multilevel Modeling
Number of models number of units plus correction for multiple comparisons one
Sharing of information each unit is independent units are exchangeable and loosely regularized
Focus of error control overall type I (i.e., FPR) type S (sign) and type M (magnitude)
Strategy for multiplicity FPR correction (control for inflated statistical evidence) partial pooling (control for inflated effect sizes)
Effect uncertainty epistemic (effect is intrinsic and fixed with uncertainty from measurement error, etc.) aleatoric (effect has inherent variability)
Effect inferences effect: locally unbiased with no calibration; uncertainty: uninterpretable at unit level and dichotomized at the clique level effect: locally biased and globally calibrated; uncertainty: expressed via posterior distribution
Framing of hypotheses P(data | H0): estimate the “surprise” of having the observed data under the null hypothesis H0 scenario P(HR | data): find the evidence for research hypothesis HR given the observed data
Inference method perform NHST with a binary decision based on an FPR-adjusted threshold assess statistical evidence P(HR | data) through posterior distribution: highlight but no hide
Model efficiency local (e.g., unbiasedness of each unit, statistical power) global (cross-validations, posterior predictive checks)