2017-03-13T13:54:40Z
2017-09-27T22:01:25Z
2017
2017-03-13T13:54:40Z
Presenting natural frequencies facilitates Bayesian inferences relative to using percentages. Nevertheless, many people, including highly educated and skilled reasoners, still fail to provide Bayesian responses to these computationally simple problems. We show that the complexity of relational reasoning (e.g., the structural mapping between the presented and requested relations) can help explain the remaining difficulties. With a non-Bayesian inference that required identical arithmetic but afforded a more direct structural mapping, performance was universally high. Furthermore, reducing the relational demands of the task through questions that directed reasoners to use the presented statistics, as compared with questions that prompted the representation of a second, similar sample, also significantly improved reasoning. Distinct error patterns were also observed between these presented- and similar-sample scenarios, which suggested differences in relational-reasoning strategies. On the other hand, while higher numeracy was associated with better Bayesian reasoning, higher-numerate reasoners were not immune to the relational complexity of the task. Together, these findings validate the relational-reasoning view of Bayesian problem solving and highlight the importance of considering not only the presented task structure, but also the complexity of the structural alignment between the presented and requested relations.
Article
Accepted version
English
Estadística bayesiana; Raonament (Psicologia); Bayesian statistical decision; Reasoning (Psychology)
Springer Verlag
Versió postprint del document publicat a: https://doi.org/10.3758/s13423-016-1159-6
Psychonomic Bulletin & Review, 2017, vol. 24, num. 3, p. 964-971
https://doi.org/10.3758/s13423-016-1159-6
(c) Springer Verlag, 2017