A Realistic Evaluation of Methods for Handling Missing Data When There is a Mixture of MCAR, MAR, and MNAR Mechanisms in the Same Dataset.

IF 5.3 3区 心理学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Multivariate Behavioral Research Pub Date : 2023-09-01 Epub Date: 2023-01-04 DOI:10.1080/00273171.2022.2158776
Brenna Gomer, Ke-Hai Yuan
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引用次数: 2

Abstract

The impact of missing data on statistical inference varies depending on several factors such as the proportion of missingness, missing-data mechanism, and method employed to handle missing values. While these topics have been extensively studied, most recommendations have been made assuming that all missing values are from the same missing-data mechanism. In reality, it is very likely that a mixture of missing-data mechanisms is responsible for missing values in a dataset and even within the same pattern of missingness. Although a mixture of missing-data mechanisms and causes within a dataset is a likely scenario, the performance of popular missing-data methods under these circumstances is unknown. This study provides a realistic evaluation of methods for handling missing data in this setting using Monte Carlo simulation in the context of regression. This study also seeks to identify acceptable proportions of missing values that violate the missing-data mechanism assumed by the method used to handle missing values. Results indicate that multiple imputation (MI) performs better than other principled or ad-hoc methods. Different missing-data methods are also compared via the analysis of a real dataset in which mixtures of missingness mechanisms are created. Recommendations are provided for the use of different methods in practice.

当同一数据集中存在MCAR、MAR和MNAR机制的混合时,处理缺失数据的方法的真实评估。
缺失数据对统计推断的影响取决于几个因素,如缺失的比例、缺失数据机制和处理缺失值的方法。虽然对这些主题进行了广泛的研究,但大多数建议都是假设所有缺失值都来自同一缺失数据机制。事实上,很可能是缺失数据机制的混合导致了数据集中的缺失值,甚至是在相同的缺失模式中。尽管数据集中可能存在数据丢失机制和原因的混合情况,但在这些情况下,流行的数据丢失方法的性能是未知的。本研究使用回归背景下的蒙特卡罗模拟,对在这种情况下处理缺失数据的方法进行了现实的评估。本研究还试图确定可接受的缺失值比例,这些缺失值违反了用于处理缺失值的方法所假设的缺失数据机制。结果表明,多重插补(MI)比其他原则性或特殊方法表现更好。通过对真实数据集的分析,还比较了不同的缺失数据方法,其中创建了缺失机制的混合物。提供了在实践中使用不同方法的建议。
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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来源期刊
Multivariate Behavioral Research
Multivariate Behavioral Research 数学-数学跨学科应用
CiteScore
7.60
自引率
2.60%
发文量
49
审稿时长
>12 weeks
期刊介绍: Multivariate Behavioral Research (MBR) publishes a variety of substantive, methodological, and theoretical articles in all areas of the social and behavioral sciences. Most MBR articles fall into one of two categories. Substantive articles report on applications of sophisticated multivariate research methods to study topics of substantive interest in personality, health, intelligence, industrial/organizational, and other behavioral science areas. Methodological articles present and/or evaluate new developments in multivariate methods, or address methodological issues in current research. We also encourage submission of integrative articles related to pedagogy involving multivariate research methods, and to historical treatments of interest and relevance to multivariate research methods.
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