Multiple Imputation with Massive Data: An Application to the Panel Study of Income Dynamics.

IF 1.6 4区 数学 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS Journal of Survey Statistics and Methodology Pub Date : 2021-10-19 eCollection Date: 2023-02-01 DOI:10.1093/jssam/smab038
Yajuan Si, Steve Heeringa, David Johnson, Roderick J A Little, Wenshuo Liu, Fabian Pfeffer, Trivellore Raghunathan
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引用次数: 5

Abstract

Multiple imputation (MI) is a popular and well-established method for handling missing data in multivariate data sets, but its practicality for use in massive and complex data sets has been questioned. One such data set is the Panel Study of Income Dynamics (PSID), a longstanding and extensive survey of household income and wealth in the United States. Missing data for this survey are currently handled using traditional hot deck methods because of the simple implementation; however, the univariate hot deck results in large random wealth fluctuations. MI is effective but faced with operational challenges. We use a sequential regression/chained-equation approach, using the software IVEware, to multiply impute cross-sectional wealth data in the 2013 PSID, and compare analyses of the resulting imputed data with those from the current hot deck approach. Practical difficulties, such as non-normally distributed variables, skip patterns, categorical variables with many levels, and multicollinearity, are described together with our approaches to overcoming them. We evaluate the imputation quality and validity with internal diagnostics and external benchmarking data. MI produces improvements over the existing hot deck approach by helping preserve correlation structures, such as the associations between PSID wealth components and the relationships between the household net worth and sociodemographic factors, and facilitates completed data analyses with general purposes. MI incorporates highly predictive covariates into imputation models and increases efficiency. We recommend the practical implementation of MI and expect greater gains when the fraction of missing information is large.

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海量数据的多重输入:在收入动态面板研究中的应用。
多重插值(Multiple imputation, MI)是一种处理多元数据集缺失数据的常用方法,但其在大规模复杂数据集中的实用性一直受到质疑。收入动态小组研究(PSID)就是这样一组数据,这是一项长期而广泛的美国家庭收入和财富调查。由于执行简单,目前使用传统的热甲板方法处理该调查的缺失数据;然而,单变量热牌会导致财富的大随机波动。MI是有效的,但面临着操作上的挑战。我们使用顺序回归/链式方程方法,使用IVEware软件,将2013年PSID中的估算截面财富数据相乘,并将所得估算数据与当前热甲板方法的分析结果进行比较。实际困难,如非正态分布变量,跳跃模式,分类变量与许多层次,多重共线性,描述了我们的方法来克服它们。我们通过内部诊断和外部基准数据来评估imputation的质量和有效性。MI通过帮助保存相关结构(例如PSID财富组成部分之间的关联以及家庭净资产与社会人口因素之间的关系),对现有的热甲板方法进行了改进,并促进了具有一般用途的完整数据分析。人工智能将高度预测的协变量整合到估算模型中,提高了效率。我们推荐MI的实际实现,并期望在丢失信息的比例较大时获得更大的收益。
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来源期刊
CiteScore
4.30
自引率
9.50%
发文量
40
期刊介绍: The Journal of Survey Statistics and Methodology, sponsored by AAPOR and the American Statistical Association, began publishing in 2013. Its objective is to publish cutting edge scholarly articles on statistical and methodological issues for sample surveys, censuses, administrative record systems, and other related data. It aims to be the flagship journal for research on survey statistics and methodology. Topics of interest include survey sample design, statistical inference, nonresponse, measurement error, the effects of modes of data collection, paradata and responsive survey design, combining data from multiple sources, record linkage, disclosure limitation, and other issues in survey statistics and methodology. The journal publishes both theoretical and applied papers, provided the theory is motivated by an important applied problem and the applied papers report on research that contributes generalizable knowledge to the field. Review papers are also welcomed. Papers on a broad range of surveys are encouraged, including (but not limited to) surveys concerning business, economics, marketing research, social science, environment, epidemiology, biostatistics and official statistics. The journal has three sections. The Survey Statistics section presents papers on innovative sampling procedures, imputation, weighting, measures of uncertainty, small area inference, new methods of analysis, and other statistical issues related to surveys. The Survey Methodology section presents papers that focus on methodological research, including methodological experiments, methods of data collection and use of paradata. The Applications section contains papers involving innovative applications of methods and providing practical contributions and guidance, and/or significant new findings.
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