Journal article

An improved probabilistic account of counterfactual reasoning

CG Lucas, C Kemp

Psychological Review | AMER PSYCHOLOGICAL ASSOC | Published : 2015

Open access

Abstract

When people want to identify the causes of an event, assign credit or blame, or learn from their mistakes, they often reflect on how things could have gone differently. In this kind of reasoning, one considers a counterfactual world in which some events are different from their real-world counterparts and considers what else would have changed. Researchers have recently proposed several probabilistic models that aim to capture how people do (or should) reason about counterfactuals. We present a new model and show that it accounts better for human inferences than several alternative models. Our model builds on the work of Pearl (2000), and extends his approach in a way that accommodates backt..

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University of Melbourne Researchers

Grants

Awarded by NSF


Funding Acknowledgements

A preliminary version of this work was presented at the 34th Annual Meeting of the Cognitive Science Society. We thank David Danks and David Over for valuable comments on this research and on this article. This work was supported by the James S. McDonnell Foundation Causal Learning Collaborative Initiative and by NSF Award CDI-0835797.