Resampling-based information criteria for best-subset regression

被引:0
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作者
Philip T. Reiss
Lei Huang
Joseph E. Cavanaugh
Amy Krain Roy
机构
[1] New York University School of Medicine,Department of Child and Adolescent Psychiatry
[2] Nathan S. Kline Institute for Psychiatric Research,Department of Biostatistics
[3] Johns Hopkins Bloomberg School of Public Health,Department of Biostatistics
[4] University of Iowa College of Public Health,Department of Psychology
[5] Fordham University,undefined
关键词
Adaptive model selection; Covariance inflation criterion; Cross-validation; Extended information criterion; Functional connectivity; Overoptimism;
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摘要
When a linear model is chosen by searching for the best subset among a set of candidate predictors, a fixed penalty such as that imposed by the Akaike information criterion may penalize model complexity inadequately, leading to biased model selection. We study resampling-based information criteria that aim to overcome this problem through improved estimation of the effective model dimension. The first proposed approach builds upon previous work on bootstrap-based model selection. We then propose a more novel approach based on cross-validation. Simulations and analyses of a functional neuroimaging data set illustrate the strong performance of our resampling-based methods, which are implemented in a new R package.
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页码:1161 / 1186
页数:25
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