Recent advances in the study of the illusion of causalitytheory, methods, and practical implications
- María Manuela Moreno-Fernández 1
- Fernando Blanco 2
- Helena Matute 1
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1
Universidad de Granada
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2
Universidad de Deusto
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ISSN: 1576-8597
Year of publication: 2023
Volume: 44
Issue: 2
Type: Article
More publications in: Psicológica: Revista de metodología y psicología experimental
Abstract
Learning causal relations provides the knowledge that allows us to make accurate predictions. Some of these predictions may have a high value for survival, and some of them provide us with a body of knowledge that maximize context adaptation. This is why researchers have tried to understand how people make causal inferences and learn about the causal structures in their environment. In this article, we will outline some of the most recent advances in the understanding of causal learning, and specifically of the biases that often appear in decision-making.
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