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首页> 外文期刊>Journal of the Japan Statistical Society >AKAIKE INFORMATION CRITERION FOR SELECTING COMPONENTS OF THE MEAN VECTOR IN HIGH DIMENSIONAL DATA WITH FEWER OBSERVATIONS
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AKAIKE INFORMATION CRITERION FOR SELECTING COMPONENTS OF THE MEAN VECTOR IN HIGH DIMENSIONAL DATA WITH FEWER OBSERVATIONS

机译:利用较少的观测值在高维数据中选择均值矢量分量的信息准则

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摘要

The Akaike information criterion (AIC) lias been successfully used in the literature in model selection when there are a small number of parameters p and a large number of observations N. The cases when p is large and close to N or when p > N have not been considered in the literature. In fact, when p is large and close to N, the available AIC does not perform well at all. We consider these cases in the context of finding the number of components of the mean vector that may be different from zero in one-sample multivariate analysis. In fact, we consider this problem in more generality by considering it as a growth curve model introduced in Rao (1959) and Potthoff and Roy (1964). Using simulation, it has been shown that the proposed AIC procedures perform well.
机译:当参数p少且观测值N较大时,Akaike信息准则(AIC)lias已成功用于模型选择中。当p大且接近N或p> N时,文献中未考虑。实际上,当p大且接近N时,可用的AIC根本无法表现良好。我们在寻找均值向量的分量数量(在一样本多变量分析中可能不同于零)的情况下考虑这些情况。实际上,我们将此问题视为Rao(1959)以及Potthoff and Roy(1964)中引入的增长曲线模型来更普遍地考虑。通过仿真,已证明所提出的AIC程序运行良好。

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