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COGSCI
2010

Inferring Hidden Causal Structure

13 years 11 months ago
Inferring Hidden Causal Structure
We used a new method to assess how people can infer unobserved causal structure from patterns of observed events. Participants were taught to draw causal graphs, and then shown a pattern of associations and interventions on a novel causal system. Given minimal training and no feedback, participants in Experiment 1 used causal graph notation to spontaneously draw structures containing one observed cause, one unobserved common cause, and two unobserved independent causes, depending on the pattern of associations and interventions they saw. We replicated these findings with less-informative training (Experiments 2 and 3) and a new apparatus (Experiment 3) to show that the pattern of data leads to hidden causal inferences across a range of prior constraints on causal knowledge.
Tamar Kushnir, Alison Gopnik, Chris Lucas, Laura S
Added 09 Dec 2010
Updated 09 Dec 2010
Type Journal
Year 2010
Where COGSCI
Authors Tamar Kushnir, Alison Gopnik, Chris Lucas, Laura Schulz
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