2023
DOI: 10.3390/e25030434
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Far from Asymptopia: Unbiased High-Dimensional Inference Cannot Assume Unlimited Data

Abstract: Inference from limited data requires a notion of measure on parameter space, which is most explicit in the Bayesian framework as a prior distribution. Jeffreys prior is the best-known uninformative choice, the invariant volume element from information geometry, but we demonstrate here that this leads to enormous bias in typical high-dimensional models. This is because models found in science typically have an effective dimensionality of accessible behaviors much smaller than the number of microscopic parameter… Show more

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