How robust are probabilistic models of higher-level cognition?
- PMID: 24084039
- DOI: 10.1177/0956797613495418
How robust are probabilistic models of higher-level cognition?
Abstract
An increasingly popular theory holds that the mind should be viewed as a near-optimal or rational engine of probabilistic inference, in domains as diverse as word learning, pragmatics, naive physics, and predictions of the future. We argue that this view, often identified with Bayesian models of inference, is markedly less promising than widely believed, and is undermined by post hoc practices that merit wholesale reevaluation. We also show that the common equation between probabilistic and rational or optimal is not justified.
Keywords: Bayesian models; cognition(s); optimality.
Comment in
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Relevant and robust: a response to Marcus and Davis (2013).Psychol Sci. 2015 Apr;26(4):539-41. doi: 10.1177/0956797614559544. Epub 2015 Mar 5. Psychol Sci. 2015. PMID: 25749699 No abstract available.
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Still searching for principles: a response to Goodman et al. (2015).Psychol Sci. 2015 Apr;26(4):542-4. doi: 10.1177/0956797614568433. Epub 2015 Mar 5. Psychol Sci. 2015. PMID: 25749703 No abstract available.
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