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Bayesian generic priors for causal learning
2008
Psychological review
The article presents a Bayesian model of causal learning that incorporates generic priors-systematic assumptions about abstract properties of a system of cause-effect relations. The proposed generic priors for causal learning favor sparse and strong (SS) causes-causes that are few in number and high in their individual powers to produce or prevent effects. The SS power model couples these generic priors with a causal generating function based on the assumption that unobservable causal
doi:10.1037/a0013256
pmid:18954210
fatcat:vsrc2sueabeynceyh2k7g7gdju