使用交叉分类混合效应位置-尺度模型检测和理解调查数据中的访员效应

Detecting and Understanding Interviewer Effects on Survey data by using a Cross-classified Mixed Effects Location–scale Model

Journal of the Royal Statistical Society. Series A: Statistics in Society · 2016
被引 69 · 同刊同年前 9%
ABS 3

中文导读

提出一个交叉分类混合效应位置-尺度模型,用于分析调查数据中访员对受访者回答均值和变异性的影响,帮助研究者识别影响调查误差的因素。

Abstract

Summary We propose a cross-classified mixed effects location–scale model for the analysis of interviewer effects in survey data. The model extends the standard two-way cross-classified random-intercept model (respondents nested in interviewers crossed with areas) by specifying the residual variance to be a function of covariates and an additional interviewer random effect. This extension provides a way to study interviewers’ effects on not just the ‘location’ (mean) of respondents’ responses, but additionally on their ‘scale’ (variability). It therefore allows researchers to address new questions such as ‘Do interviewers influence the variability of their respondents’ responses in addition to their average, and if so why?’. In doing so, the model facilitates a more complete and flexible assessment of the factors that are associated with interviewer error. We illustrate this model by using data from wave 3 of the UK Household Longitudinal Survey, which we link to a range of interviewer characteristics measured in an independent survey of interviewers. By identifying both interviewer characteristics in general, but also specific interviewers who are associated with unusually high or low or homogeneous or heterogeneous responses, the model provides a way to inform improvements to survey quality.

调查方法访员效应混合效应模型数据质量