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) |