Discussion about this post

User's avatar
Manjari Narayan's avatar

The frontiers of biostatistics is filled with a variety of "variance explained" equivalent measures but based on interventional prediction rather than associational/observational prediction (per Pearl's ladder of different "predictions"). They haven't been written up for a mainstream audience. Former RAND statistics group members have done work on this!

Linda Broughton Warnier's avatar

This essay made me think of an expectations-feedback loop: individually rational behavior can create collectively irrational science, which is precisely why your micro/macro split feels essential.

Related: Schweiger's Nature piece on the "Szilard point" (where the total cost of applying/reviewing/admin can approach or exceed the value of the funding itself) is a brutal quantification of the macro-incentive distortion you're describing. https://www.nature.com/articles/d41586-025-04060-x

And at the micro level, Panin et al., Time for Tea is a neat analogue: a small mis-specification in the question (present equivalents) can turn into a systematic distortion of the answer (utility curvature masquerading as patience), and their "risk equivalents" fix is basically measurement-level reform. https://doi.org/10.1016/j.jdeveco.2024.103261

(If useful, I also found Hazée et al.'s open science effectiveness + adoption audit a convenient "full-stack" bridge: https://doi.org/10.1177/10946705251338461.)

3 more comments...

No posts

Ready for more?