Model selection for multivariate regression in small samples

EJ Bedrick, CL Tsai - Biometrics, 1994 - JSTOR
Biometrics, 1994JSTOR
We develop a small-sample criterion (AICC) for selecting multivariate regression models.
This criterion adjusts the Akaike information criterion to be an exact unbiased estimator for
the expected Kullback-Leibler information. A small-sample comparison shows that AICC
provides better model order choices than other available model selection methods. Data
from an agricultural experiment are analyzed.
We develop a small-sample criterion (AICC) for selecting multivariate regression models. This criterion adjusts the Akaike information criterion to be an exact unbiased estimator for the expected Kullback-Leibler information. A small-sample comparison shows that AICC provides better model order choices than other available model selection methods. Data from an agricultural experiment are analyzed.
JSTOR
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