Rational Ignorance: Simpler Models Learn More Information from Finite Data
ORAL
Abstract
We use the language of uninformative Bayesian prior choice to study the selection of appropriately simple effective models. We advocate for the prior which maximizes the mutual information between parameters and predictions, learning as much as possible from limited data. When many parameters are poorly constrained by the available data, we find that this prior puts weight only on boundaries of the parameter manifold. Thus it selects a lower-dimensional effective theory in a principled way, ignoring irrelevant parameter directions. In the limit where there is sufficient data to tightly constrain any number of parameters, this reduces to Jeffreys prior. But we argue that this limit is pathological when applied to the hyper-ribbon parameter manifolds generic in science, because it leads to dramatic dependence on effects invisible to experiment.
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Presenters
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Henry Mattingly
Molecular, Cellular, and Developmental Biology, Yale University
Authors
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Henry Mattingly
Molecular, Cellular, and Developmental Biology, Yale University
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Mark Transtrum
Physics and Astronomy, Brigham Young Univ - Provo, Department of Physics and Astronomy, Brigham Young University
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Michael Abbott
Institute of Physics, Jagiellonian University
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Benjamin Machta
Physics, Yale University, Department of Physics and Systems Biology Institute, Yale University