| Literature DB >> 30759048 |
Hayley M Dorfman1,2, Rahul Bhui1,2,3, Brent L Hughes4, Samuel J Gershman1,2.
Abstract
People learn differently from good and bad outcomes. We argue that valence-dependent learning asymmetries are partly driven by beliefs about the causal structure of the environment. If hidden causes can intervene to generate bad (or good) outcomes, then a rational observer will assign blame (or credit) to these hidden causes, rather than to the stable outcome distribution. Thus, a rational observer should learn less from bad outcomes when they are likely to have been generated by a hidden cause, and this pattern should reverse when hidden causes are likely to generate good outcomes. To test this hypothesis, we conducted two experiments ( N = 80, N = 255) in which we explicitly manipulated the behavior of hidden agents. This gave rise to both kinds of learning asymmetries in the same paradigm, as predicted by a novel Bayesian model. These results provide a mechanistic framework for understanding how causal attributions contribute to biased learning.Entities:
Keywords: Bayesian inference; agency; attribution; decision making; open data; open materials; preregistered; reinforcement learning
Mesh:
Year: 2019 PMID: 30759048 PMCID: PMC6472176 DOI: 10.1177/0956797619828724
Source DB: PubMed Journal: Psychol Sci ISSN: 0956-7976