启发式
可信赖性
项目反应理论
心理学
响应偏差
变化(天文学)
实证研究
计算机科学
鉴定(生物学)
特质
社会心理学
认知心理学
人工智能
心理测量学
统计
发展心理学
数学
物理
植物
天体物理学
生物
程序设计语言
作者
Esther Ulitzsch,Steffi Pohl,Lale Khorramdel,Ulf Kroehne,Matthias von Davier
标识
DOI:10.3102/10769986231173607
摘要
Questionnaires are by far the most common tool for measuring noncognitive constructs in psychology and educational sciences. Response bias may pose an additional source of variation between respondents that threatens validity of conclusions drawn from questionnaire data. We present a mixture modeling approach that leverages response time data from computer-administered questionnaires for the joint identification and modeling of two commonly encountered response bias that, so far, have only been modeled separately—careless and insufficient effort responding and response styles (RS) in attentive answering. Using empirical data from the Programme for International Student Assessment 2015 background questionnaire and the case of extreme RS as an example, we illustrate how the proposed approach supports gaining a more nuanced understanding of response behavior as well as how neglecting either type of response bias may impact conclusions on respondents’ content trait levels as well as on their displayed response behavior. We further contrast the proposed approach against a more heuristic two-step procedure that first eliminates presumed careless respondents from the data and subsequently applies model-based approaches accommodating RS. To investigate the trustworthiness of results obtained in the empirical application, we conduct a parameter recovery study.
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