记忆的错误归因
内隐联想测验
心理学
含蓄的态度
心理信息
启动(农业)
结构方程建模
归属
联想(心理学)
考试(生物学)
狂饮
社会心理学
潜变量模型
认知心理学
毒物控制
潜变量
人为因素与人体工程学
统计
认知
梅德林
计算机科学
人工智能
法学
政治学
数学
植物
心理治疗师
医学
生物
神经科学
古生物学
环境卫生
发芽
作者
Hart Blanton,Christopher N. Burrows,James Jaccard
出处
期刊:Health Psychology
[American Psychological Association]
日期:2016-08-01
卷期号:35 (8): 856-860
被引量:53
摘要
This project considered how inattention to left-out variable error and measurement correspondence in the assessment of explicit measures can result in upwardly biased estimates of the predictive utility of implicit measures designed to predict health behaviors.A pilot study (n = 96) used a cross-sectional design to predict beer consumption and a main study (n = 132) used a longitudinal design to predict binge drinking. In each study, a battery of 4 implicit inventories (implicit association test, personalized implicit association test, evaluative priming, and attribution misattribution paradigm) and a battery of correspondent explicit measures (based on the Reasoned Action Model and the Prototype Willingness Model) were administered to college youth.The Implicit Association Test and evaluative priming measures were not predictive of alcohol consumption in either study, but the personalized implicit association test (PIAT) and affective misattribution paradigm (AMP) accounted for between 5% and 12% in behavioral criteria, when analyzed in isolation or after explicit measures were statistically controlled following measurement conventions in this research domain. When implicit measures were folded into a structural equation model derived from the Reasoned Action and Prototype Willingness Models, The PIAT was no longer a significant predictor of behavior and the AMP resulted in a 1%-2% incremental increase in accounted for variance.Left-out variable error and measurement correspondence are core principles that need to be considered when modeling the relative contributions of implicit and explicit constructs in the prediction of health behaviors. (PsycINFO Database Record
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