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Influence of Self-Esteem on Regret for Criticized Normal Versus Abnormal Consumer Decisions

JOURNAL OF CONSUMER MARKETING(2024)

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摘要
PurposeThis study aims to examine differences in regret between individuals with high vs low self-esteem that follows from negative appraisals for unsuccessful consumer decisions that are either congruent or not with perceived norms. This study also tested the mediating role of decision responsibility and the ability of psychological repair work in regulating regret.Design/methodology/approachHypotheses were tested through four experimental studies using student and international panel samples across different consumer decision scenarios to generalize the findings of the study.FindingsThis study shows that high self-esteem individuals regret less a bad decision when it is congruent (normal) than when it is incongruent (abnormal) with the prevalent norms, while lower self-esteem individuals tend to regret equally both normal and abnormal decisions. This study further shows that this effect is driven by internal responsibility attributions. Finally, the results also suggest that high self-esteem people are more efficient than low self-esteem people in regulating regret, but only when the decision is abnormal.Originality/valueThe present research has important contributions to both regret and self-esteem literature. First, this study explored the role of self-esteem on regret, an individual variable that has been studied relatively little in regret literature. Second, this study has shown, consistent with recent findings, that decision congruence with the norms is a more suitable predictor of regret than whether the decision involves action or inaction. Finally, this study showed that stimulating individuals to self-enhance by engaging in psychological repair work led individuals to regulate regret, consistent with regret regulation theory.
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关键词
Regret,Self-esteem,Norms,Responsibility attribution,Self-enhancement,Regret regulation
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