Model selection bias and Freedman’s paradox

Volume: 62, Issue: 1, Pages: 117 - 125
Published: May 26, 2009
Abstract
In situations where limited knowledge of a system exists and the ratio of data points to variables is small, variable selection methods can often be misleading. Freedman (Am Stat 37:152–155, 1983) demonstrated how common it is to select completely unrelated variables as highly “significant” when the number of data points is similar in magnitude to the number of variables. A new type of model averaging estimator based on model selection with...
Paper Details
Title
Model selection bias and Freedman’s paradox
Published Date
May 26, 2009
Volume
62
Issue
1
Pages
117 - 125
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