Why we (usually) don't have to worry about multiple comparisons
Andrew Gelman
Department of Statistics
Columbia University
Applied researchers often find themselves making statistical inferences in settings that would seem to require multiple
comparisons adjustments. We challenge the Type I error paradigm that underlies these corrections. Moreover we posit
that the problem of multiple comparisons can disappear entirely when viewed from a hierarchical Bayesian perspective. We
propose building multilevel models in the settings where multiple comparisons arise. Multilevel models perform partial
pooling (shifting estimates toward each other), whereas classical procedures typically keep the centers of intervals
stationary, adjusting for multiple comparisons by making the intervals wider (or, equivalently, adjusting the p-values
corresponding to intervals of fixed width). Thus multilevel models address the multiple comparisons problem and also
yield more efficient estimates, especially in settings with low group-level variation, which is where multiple
comparisons are a particular concern.
Joint work with Jennifer Hill and Masanao Yajima.
A preliminary version of the talk is here:
http://www.stat.columbia.edu/~gelman/research/presentations/multiple_minitalk2.pdf
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