From recognition to decisions: Extending and testing recognition-based models for multialternative inference |
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Authors: | Julian N. Marewski Wolfgang Gaissmaier Lael J. Schooler Daniel G. Goldstein Gerd Gigerenzer |
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Affiliation: | 1.London Business School,London,England;2.Center for Adaptive Behavior and Cognition,Max Planck Institute for Human Development,Berlin,Germany |
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Abstract: | The recognition heuristic is a noncompensatory strategy for inferring which of two alternatives, one recognized and the other not, scores higher on a criterion. According to it, such inferences are based solely on recognition. We generalize this heuristic to tasks with multiple alternatives, proposing a model of how people identify the consideration sets from which they make their final decisions. In doing so, we address concerns about the heuristic’s adequacy as a model of behavior: Past experiments have led several authors to conclude that there is no evidence for a noncompensatory use of recognition but clear evidence that recognition is integrated with other information. Surprisingly, however, in no study was this competing hypothesis—the compensatory integration of recognition—formally specified as a computational model. In four studies, we specify five competing models, conducting eight model comparisons. In these model comparisons, the recognition heuristic emerges as the best predictor of people’s inferences. |
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