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An associative framework for probability judgment: an application to biases
Authors:Cobos Pedro L  Almaraz Julián  García-Madruga Juan A
Affiliation:Departamento de Psicología Básica, Facultad de Psicología, Universidad de Málaga, Spain. p_cobos@uma.es
Abstract:Three experiments show that understanding of biases in probability judgment can be improved by extending the application of the associative-learning framework. In Experiment 1, the authors used M. A. Gluck and G. H. Bower's (1988a) diagnostic-learning task to replicate apparent base-rate neglect and to induce the conjunction fallacy in a later judgment phase as a by-product of the conversion bias. In Experiment 2, the authors found stronger evidence of the conversion bias with the same learning task. In Experiment 3, the authors changed the diagnostic-learning task to induce some conjunction fallacies that were not based on the conversion bias. The authors show that the conjunction fallacies obtained in Experiment 3 can be explained by adding an averaging component to M. A. Gluck and G. H. Bower's model.
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