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Article: The Bayesian Sampler: Generic Bayesian Inference Causes Incoherence in Human Probability Judgments

TitleThe Bayesian Sampler: Generic Bayesian Inference Causes Incoherence in Human Probability Judgments
Authors
KeywordsApproximation
Bayes
Biases
Noise
Sampling
Issue Date2020
Citation
Psychological Review, 2020, v. 127, n. 5, p. 719-748 How to Cite?
AbstractHuman probability judgments are systematically biased, in apparent tension with Bayesian models of cognition. But perhaps the brain does not represent probabilities explicitly, but approximates probabilistic calculations through a process of sampling, as used in computational probabilistic models in statistics. Naïve probability estimates can be obtained by calculating the relative frequency of an event within a sample, but these estimates tend to be extreme when the sample size is small. We propose instead that people use a generic prior to improve the accuracy of their probability estimates based on samples, and we call this model the Bayesian sampler. The Bayesian sampler trades off the coherence of probabilistic judgments for improved accuracy, and provides a single framework for explaining phenomena associated with diverse biases and heuristics such as conservatism and the conjunction fallacy. The approach turns out to provide a rational reinterpretation of “noise” in an important recent model of probability judgment, the probability theory plus noise model (Costello & Watts, 2014, 2016a, 2017; Costello & Watts, 2019; Costello, Watts, & Fisher, 2018), making equivalent average predictions for simple events, conjunctions, and disjunctions. The Bayesian sampler does, however, make distinct predictions for conditional probabilities and distributions of probability estimates. We show in 2 new experiments that this model better captures these mean judgments both qualitatively and quantitatively; which model best fits individual distributions of responses depends on the assumed size of the cognitive sample
Persistent Identifierhttp://hdl.handle.net/10722/367705
ISSN
2023 Impact Factor: 5.1
2023 SCImago Journal Rankings: 2.785

 

DC FieldValueLanguage
dc.contributor.authorZhu, Jian Qiao-
dc.contributor.authorSanborn, Adam N.-
dc.contributor.authorChater, Nick-
dc.date.accessioned2025-12-19T07:58:47Z-
dc.date.available2025-12-19T07:58:47Z-
dc.date.issued2020-
dc.identifier.citationPsychological Review, 2020, v. 127, n. 5, p. 719-748-
dc.identifier.issn0033-295X-
dc.identifier.urihttp://hdl.handle.net/10722/367705-
dc.description.abstractHuman probability judgments are systematically biased, in apparent tension with Bayesian models of cognition. But perhaps the brain does not represent probabilities explicitly, but approximates probabilistic calculations through a process of sampling, as used in computational probabilistic models in statistics. Naïve probability estimates can be obtained by calculating the relative frequency of an event within a sample, but these estimates tend to be extreme when the sample size is small. We propose instead that people use a generic prior to improve the accuracy of their probability estimates based on samples, and we call this model the Bayesian sampler. The Bayesian sampler trades off the coherence of probabilistic judgments for improved accuracy, and provides a single framework for explaining phenomena associated with diverse biases and heuristics such as conservatism and the conjunction fallacy. The approach turns out to provide a rational reinterpretation of “noise” in an important recent model of probability judgment, the probability theory plus noise model (Costello & Watts, 2014, 2016a, 2017; Costello & Watts, 2019; Costello, Watts, & Fisher, 2018), making equivalent average predictions for simple events, conjunctions, and disjunctions. The Bayesian sampler does, however, make distinct predictions for conditional probabilities and distributions of probability estimates. We show in 2 new experiments that this model better captures these mean judgments both qualitatively and quantitatively; which model best fits individual distributions of responses depends on the assumed size of the cognitive sample-
dc.languageeng-
dc.relation.ispartofPsychological Review-
dc.subjectApproximation-
dc.subjectBayes-
dc.subjectBiases-
dc.subjectNoise-
dc.subjectSampling-
dc.titleThe Bayesian Sampler: Generic Bayesian Inference Causes Incoherence in Human Probability Judgments-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1037/rev0000190-
dc.identifier.pmid32191073-
dc.identifier.scopuseid_2-s2.0-85082774536-
dc.identifier.volume127-
dc.identifier.issue5-
dc.identifier.spage719-
dc.identifier.epage748-
dc.identifier.eissn1939-1471-

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