Bias-variance trade-off for prequential model list selection

被引:0
|
作者
Ernest Fokoue
Bertrand Clarke
机构
[1] Rochester Institute of Technology,Center for Quality and Applied Statistics
[2] University of Miami,Department of Medicine
[3] University of Miami,Department of Epidemiology and Public Health
[4] University of Miami,Center for Computational Sciences
来源
Statistical Papers | 2011年 / 52卷
关键词
Prequential; Online prediction; Bias-variance trade-off; Model selection; Bayes model averaging; Model list selection;
D O I
暂无
中图分类号
学科分类号
摘要
The prequential approach to statistics leads naturally to model list selection because the sequential reformulation of the problem is a guided search over model lists drawn from a model space. That is, continually updating the action space of a decision problem to achieve optimal prediction forces the collection of models under consideration to grow neither too fast nor too slow to avoid excess variance and excess bias, respectively. At the same time, the goal of good predictive performance forces the search over good predictors formed from a model list to close in on the data generator. Taken together, prequential model list re-selection favors model lists which provide an effective approximation to the data generator but do so by making the approximation match the unknown function on important regions as determined by empirical bias and variance.
引用
收藏
页码:813 / 833
页数:20
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