Journal article

Successful structure learning from observational data

A Rothe, B Deverett, R Mayrhofer, C Kemp

Cognition | ELSEVIER | Published : 2018

Abstract

Previous work suggests that humans find it difficult to learn the structure of causal systems given observational data alone. We identify two conditions that enable successful structure learning from observational data: people succeed if the underlying causal system is deterministic, and if each pattern of observations has a single root cause. In four experiments, we show that either condition alone is sufficient to enable high levels of performance, but that performance is poor if neither condition applies. A fifth experiment suggests that neither determinism nor root sparsity takes priority over the other. Our data are broadly consistent with a Bayesian model that embodies a preference for..

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University of Melbourne Researchers

Grants

Awarded by National Institutes of Health


Funding Acknowledgements

BD was supported by a training program in Neural Computation that was organized by CMU's Center for the Neural Basis of Cognition and funded by NIH R90 DA023426. RM was supported by research grants of the Deutsche Forschungsgemeinschaft (DFG-Wa 621/22-1, DFG-Ma 6545/1-2) as part of the priority program "New frameworks of rationality" (SPP 1516). CK was supported in part by the James S. McDonnell Foundation Causal Learning Collaborative Initiative and by NSF award CDI-0835797.