Prior research has found that indirectly measured preference for White people over Black people is positively related to categorizing angry racially ambiguous faces as Black. This past work found no evidence that directly measured racial preferences predict this racial categorization bias (RCB), suggesting that the RCB could be a unique and easily administered tool for investigating automatic evaluation and validating automatic evaluation measures. In two studies (total N > 7,000), using structural equation models that account for error variance, multiple indirect evaluation measures were uniquely related to the RCB, thus bolstering their predictive validity. However, the RCB also correlated with self-reported evaluation, leaving psychologists without a robust, replicable outcome uniquely related to automatic evaluation. The lack of such an outcome hinders theoretical and practical progress in research on implicit social cognition.

The Relation Between Evaluation and Racial Categorization of Emotional Faces

Vianello M.
2020

Abstract

Prior research has found that indirectly measured preference for White people over Black people is positively related to categorizing angry racially ambiguous faces as Black. This past work found no evidence that directly measured racial preferences predict this racial categorization bias (RCB), suggesting that the RCB could be a unique and easily administered tool for investigating automatic evaluation and validating automatic evaluation measures. In two studies (total N > 7,000), using structural equation models that account for error variance, multiple indirect evaluation measures were uniquely related to the RCB, thus bolstering their predictive validity. However, the RCB also correlated with self-reported evaluation, leaving psychologists without a robust, replicable outcome uniquely related to automatic evaluation. The lack of such an outcome hinders theoretical and practical progress in research on implicit social cognition.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3390694
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