The anchoring method: Estimation of interviewer effects in the absence of interpenetrated sample assignment.

IF 1.2 4区 数学 Q3 SOCIAL SCIENCES, MATHEMATICAL METHODS Survey Methodology Pub Date : 2022-06-01
Michael R Elliott, Brady T West, Xinyu Zhang, Stephanie Coffey
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Abstract

Methodological studies of the effects that human interviewers have on the quality of survey data have long been limited by a critical assumption: that interviewers in a given survey are assigned random subsets of the larger overall sample (also known as interpenetrated assignment). Absent this type of study design, estimates of interviewer effects on survey measures of interest may reflect differences between interviewers in the characteristics of their assigned sample members, rather than recruitment or measurement effects specifically introduced by the interviewers. Previous attempts to approximate interpenetrated assignment have typically used regression models to condition on factors that might be related to interviewer assignment. We introduce a new approach for overcoming this lack of interpenetrated assignment when estimating interviewer effects. This approach, which we refer to as the "anchoring" method, leverages correlations between observed variables that are unlikely to be affected by interviewers ("anchors") and variables that may be prone to interviewer effects to remove components of within-interviewer correlations that lack of interpenetrated assignment may introduce. We consider both frequentist and Bayesian approaches, where the latter can make use of information about interviewer effect variances in previous waves of a study, if available. We evaluate this new methodology empirically using a simulation study, and then illustrate its application using real survey data from the Behavioral Risk Factor Surveillance System (BRFSS), where interviewer IDs are provided on public-use data files. While our proposed method shares some of the limitations of the traditional approach - namely the need for variables associated with the outcome of interest that are also free of measurement error - it avoids the need for conditional inference and thus has improved inferential qualities when the focus is on marginal estimates, and it shows evidence of further reducing overestimation of larger interviewer effects relative to the traditional approach.

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锚定法:在没有互渗透样本分配的情况下,估计采访者的效果。
长期以来,关于人类采访者对调查数据质量影响的方法学研究一直受到一个关键假设的限制:在给定的调查中,采访者是从更大的总体样本中随机分配的子集(也称为相互渗透分配)。如果没有这种类型的研究设计,对感兴趣的调查措施的访谈者效应的估计可能反映了访谈者在其分配的样本成员特征上的差异,而不是访谈者专门引入的招聘或测量效应。以前尝试近似互渗透分配通常使用回归模型来限制可能与采访者分配相关的因素。我们引入了一种新的方法来克服在估计采访者效果时缺乏互渗透分配的问题。这种方法,我们称之为“锚定”方法,利用观察到的变量之间的相关性,这些变量不太可能受到采访者(“锚定”)的影响,而变量可能容易受到采访者的影响,以消除缺乏相互渗透分配可能引入的采访者内部相关性的成分。我们考虑频率论和贝叶斯方法,后者可以利用前几波研究中关于采访者效应方差的信息,如果有的话。我们通过模拟研究对这种新方法进行了实证评估,然后使用行为风险因素监测系统(BRFSS)的真实调查数据来说明其应用,其中采访者的id提供在公共使用数据文件中。虽然我们提出的方法有一些传统方法的局限性——即需要与感兴趣的结果相关的变量,这些变量也没有测量误差——但它避免了条件推理的需要,因此在关注边际估计时提高了推理质量,并且它显示了相对于传统方法进一步减少对更大的采访者影响的高估的证据。
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来源期刊
Survey Methodology
Survey Methodology 数学-统计学与概率论
CiteScore
0.80
自引率
22.20%
发文量
0
审稿时长
>12 weeks
期刊介绍: The journal publishes articles dealing with various aspects of statistical development relevant to a statistical agency, such as design issues in the context of practical constraints, use of different data sources and collection techniques, total survey error, survey evaluation, research in survey methodology, time series analysis, seasonal adjustment, demographic studies, data integration, estimation and data analysis methods, and general survey systems development. The emphasis is placed on the development and evaluation of specific methodologies as applied to data collection or the data themselves.
期刊最新文献
The anchoring method: Estimation of interviewer effects in the absence of interpenetrated sample assignment. A note on multiply robust predictive mean matching imputation with complex survey data. Optimum allocation for a dual-frame telephone survey. Combining information from multiple complex surveys. A nonparametric method to generate synthetic populations to adjust for complex sampling design features.
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