具有单调缺失数据的增长曲线模型的AIC

Q3 Business, Management and Accounting
Ayaka Yagi, T. Seo, Y. Fujikoshi
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引用次数: 0

摘要

摘要在本文中,当数据集具有单调的观测缺失模式时,我们考虑增长曲线模型的单样本版本的AIC。众所周知,AIC可以看作是由期望-预测似然定义的AIC型风险的近似无偏估计量。这里,可能性是基于观察到的数据。首先,当协方差矩阵已知时,我们导出AIC,它是AIC型风险函数的精确无偏估计量。接下来,当协方差矩阵未知时,我们仅使用基于完整数据集的估计量来导出传统的AIC。最后,给出了一个数值例子来说明我们的模型选择过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AIC for Growth Curve Model with Monotone Missing Data
Abstract In this article, we consider an AIC for a one-sample version of the growth curve model when the dataset has a monotone pattern of missing observations. It is well known that the AIC can be regarded as an approximately unbiased estimator of the AIC-type risk defined by the expected -predictive likelihood. Here, the likelihood is based on the observed data. First, when the covariance matrix is known, we derive an AIC, which is an exact unbiased estimator of the AIC-type risk function. Next, when the covariance matrix is unknown, we derive a conventional AIC using the estimators based on the complete data set only. Finally, a numerical example is presented to illustrate our model selection procedure.
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来源期刊
American Journal of Mathematical and Management Sciences
American Journal of Mathematical and Management Sciences Business, Management and Accounting-Business, Management and Accounting (all)
CiteScore
2.70
自引率
0.00%
发文量
5
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