The GIC for model selection: A hypothesis testing approach.
Sunil Rao
Department of Epidemiology and Biostatistics, CWRU
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Octbor 15, at 327 Yost Talk: 4:00 - 5:00 p.m. Friday, October 15, at 327 Yost.
We consider the model (subset) selection problem for linear regression.
Although hypothesis testing and model selection are two different
approaches, there are similarities between them. In this article we
combine these two approaches together and
propose a particular choice of the penalty parameter in the
generalized information criterion (GIC),
which leads to a model selection procedure that inherits good properties from
both approaches, i.e., its overfitting and underfitting probabilities
converge to 0 as the sample size n grows and, when n is fixed,
its overfitting probability is controlled to be
approximately under a pre-assigned level of significance.
This is joint work with Jun Shao at the University of Wisconsin, Madison.
Questions? Nidhan Choudhuri