Model Selection with Missing Data Embedded in Missing-at-Random Data

Pub Date : 2023-04-11 DOI:10.3390/stats6020031
Keiji Takai, Kenichi Hayashi
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Abstract

When models are built with missing data, an information criterion is needed to select the best model among the various candidates. Using a conventional information criterion for missing data may lead to the selection of the wrong model when data are not missing at random. Conventional information criteria implicitly assume that any subset of missing-at-random data is also missing at random, and thus the maximum likelihood estimator is assumed to be consistent; that is, it is assumed that the estimator will converge to the true value. However, this assumption may not be practical. In this paper, we develop an information criterion that works even for not-missing-at-random data, so long as the largest missing data set is missing at random. Simulations are performed to show the superiority of the proposed information criterion over conventional criteria.
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随机数据缺失中嵌入缺失数据的模型选择
当使用缺失数据构建模型时,需要一个信息标准来从各种候选模型中选择最佳模型。当数据不是随机丢失时,使用传统的信息准则来处理丢失数据可能会导致选择错误的模型。传统的信息准则隐含地假设随机缺失数据的任何子集也是随机缺失的,因此假设最大似然估计量是一致的;也就是说,假设估计量收敛于真值。然而,这种假设可能并不实际。在本文中,我们开发了一个信息准则,即使对于非随机缺失的数据,只要最大的缺失数据集是随机缺失的。仿真结果表明,所提出的信息准则优于传统准则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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