Overcorrection for Social-Categorization Information Moderates Impact Bias in Affective Forecasting

Volume: 27, Issue: 10, Pages: 1340 - 1351
Published: Aug 20, 2016
Abstract
Plural societies require individuals to forecast how others-both in-group and out-group members-will respond to gains and setbacks. Typically, correcting affective forecasts to include more relevant information improves their accuracy by reducing their extremity. In contrast, we found that providing affective forecasters with social-category information about their targets made their forecasts more extreme and therefore less accurate. In both...
Paper Details
Title
Overcorrection for Social-Categorization Information Moderates Impact Bias in Affective Forecasting
Published Date
Aug 20, 2016
Volume
27
Issue
10
Pages
1340 - 1351
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