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A model selection criterion for discriminant analysis of high-dimensional data with fewer observations

机译:判别较少的高维数据判别分析的模型选择标准

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摘要

This paper is concerned with the problem of selecting variables in two-group discriminant analysis for high-dimensional data with fewer observations than the dimension. We consider a selection criterion based on approximately unbiased for AIC type of risk. When the dimension is large compared to the sample size, AIC type of risk cannot be defined. We propose AIC by replacing maximum likelihood estimator with ridge-type estimator. This idea follows Srivastava and Kubokawa (2008). It has been further extended by Yamamura et al. (2010). Simulation revealed that the proposed AIC performs well.
机译:本文关注的是在高分辨数据的两组判别分析中选择变量的问题,这些观测数据少于维。我们考虑基于AIC风险的近似无偏的选择标准。当维数与样本量相比较大时,无法定义AIC风险类型。我们提出通过用岭型估计器代替最大似然估计器来提出AIC。这个想法遵循Srivastava和Kubokawa(2008)。 Yamamura等人进一步扩展了它。 (2010)。仿真表明,提出的AIC表现良好。

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