Using Auxiliary Marginal Distributions in Imputations for Nonresponse while Accounting for Survey Weights, with Application to Estimating Voter Turnout

IF 1.6 4区 数学 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS
Jiurui Tang, D Sunshine Hillygus, Jerome P Reiter
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引用次数: 0

Abstract

Abstract In many survey settings, population counts or percentages are available for some of the variables in the survey, for example, from censuses, administrative databases, or other high-quality surveys. We present a model-based approach to utilize such auxiliary marginal distributions in multiple imputation for unit and item nonresponse in complex surveys. In doing so, we ensure that the imputations produce design-based estimates that are plausible given the known margins. We introduce and utilize a hybrid missingness model comprising a pattern mixture model for unit nonresponse and selection models for item nonresponse. We also develop a computational strategy for estimating the parameters of and generating imputations with hybrid missingness models. We apply a hybrid missingness model to examine voter turnout by subgroups using the 2018 Current Population Survey for North Carolina. The hybrid missingness model also facilitates modeling measurement errors simultaneously with handling missing values. We illustrate this feature with the voter turnout application by examining how results change when we allow for overreporting, that is, individuals self-reporting that they voted when in fact they did not.
在考虑调查权重的情况下,用辅助边际分布估计无反应,并应用于估计选民投票率
在许多调查设置中,可以从人口普查、行政数据库或其他高质量调查中获得调查中的某些变量的人口计数或百分比。我们提出了一种基于模型的方法来利用这种辅助边际分布在复杂调查中对单位和项目无反应的多重输入中。在这样做时,我们确保估算产生基于设计的估计,给定已知的边际是合理的。引入并利用了一种混合缺失模型,该模型包括单元无响应的模式混合模型和项目无响应的选择模型。我们还开发了一种计算策略,用于估计混合缺失模型的参数和生成插值。我们采用混合缺失模型,使用2018年北卡罗来纳州当前人口调查来检查子群体的选民投票率。混合缺失模型还有助于在处理缺失值的同时建模测量误差。我们用选民投票率应用程序来说明这一特性,通过检查当我们允许虚报时结果是如何变化的,虚报是指个人自我报告他们投票了,而实际上他们没有投票。
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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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