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Model averaging approaches to data subset selection
by
Sitison, Jacob W
, Neil, Ethan T
in
Criteria
/ Robustness (mathematics)
/ Statistical analysis
/ Uncertainty
2023
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Model averaging approaches to data subset selection
by
Sitison, Jacob W
, Neil, Ethan T
in
Criteria
/ Robustness (mathematics)
/ Statistical analysis
/ Uncertainty
2023
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Paper
Model averaging approaches to data subset selection
2023
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Overview
Model averaging is a useful and robust method for dealing with model uncertainty in statistical analysis. Often, it is useful to consider data subset selection at the same time, in which model selection criteria are used to compare models across different subsets of the data. Two different criteria have been proposed in the literature for how the data subsets should be weighted. We compare the two criteria closely in a unified treatment based on the Kullback-Leibler divergence, and conclude that one of them is subtly flawed and will tend to yield larger uncertainties due to loss of information. Analytical and numerical examples are provided.
Publisher
Cornell University Library, arXiv.org
Subject
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