Expertise, Counterfactual Thinking, and Fairness Perceptions: A Test of Fairness Theory

被引:0
|
作者
Jessica M. Nicklin
机构
[1] University of Hartford,
来源
Social Justice Research | 2013年 / 26卷
关键词
Fairness theory; Fairness; Justice; Expertise; Agent characteristics; Counterfactual thinking; Overall justice; Global models of justice;
D O I
暂无
中图分类号
学科分类号
摘要
While fairness theory (Folger & Cropanzano, 1998, 2001) suggests perceptions of injustice are due to accountability judgments and counterfactual thinking, few studies have examined the influence of contextual variables on counterfactual thinking and the mediating role of counterfactual thought. Further, the few studies that have examined this have resulted in mixed findings, which may be attributable to the methodology used. The present research utilized a unique approach to examine fairness theory: the double-randomized design. Study 1 showed that agent expertise is related to would and should counterfactual strength and the generation of other-attributed counterfactuals (X → M). Study 2 showed that would and should counterfactuals are related to fairness perceptions (M → Y). This study integrates previous research examining fairness theory and highlights the importance of counterfactual thoughts on fairness perceptions when a person’s level of expertise is made salient. Additional implications for research and practice are discussed.
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页码:42 / 60
页数:18
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