Probabilistic Inference: Task Dependency and Individual Differences of Probability Weighting Revealed by Hierarchical Bayesian Modeling

Cognitive determinants of probabilistic inference were examined using hierarchical Bayesian modeling techniques. A classic urn-ball paradigm served as experimental strategy, involving a factorial two (prior probabilities) by two (likelihoods) design. Five computational models of cognitive processes...

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Published in:Frontiers in psychology Vol. 7; p. 755
Main Authors: Boos, Moritz, Seer, Caroline, Lange, Florian, Kopp, Bruno
Format: Journal Article
Language:English
Published: Switzerland Frontiers Media S.A 27-05-2016
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Summary:Cognitive determinants of probabilistic inference were examined using hierarchical Bayesian modeling techniques. A classic urn-ball paradigm served as experimental strategy, involving a factorial two (prior probabilities) by two (likelihoods) design. Five computational models of cognitive processes were compared with the observed behavior. Parameter-free Bayesian posterior probabilities and parameter-free base rate neglect provided inadequate models of probabilistic inference. The introduction of distorted subjective probabilities yielded more robust and generalizable results. A general class of (inverted) S-shaped probability weighting functions had been proposed; however, the possibility of large differences in probability distortions not only across experimental conditions, but also across individuals, seems critical for the model's success. It also seems advantageous to consider individual differences in parameters of probability weighting as being sampled from weakly informative prior distributions of individual parameter values. Thus, the results from hierarchical Bayesian modeling converge with previous results in revealing that probability weighting parameters show considerable task dependency and individual differences. Methodologically, this work exemplifies the usefulness of hierarchical Bayesian modeling techniques for cognitive psychology. Theoretically, human probabilistic inference might be best described as the application of individualized strategic policies for Bayesian belief revision.
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Present Address: Moritz Boos, Department of Psychology, Carl von Ossietzky University Oldenburg, Oldenburg, Germany
This article was submitted to Quantitative Psychology and Measurement, a section of the journal Frontiers in Psychology
Edited by: Pietro Cipresso, IRCCS Istituto Auxologico Italiano, Italy
Reviewed by: Richard S. John, University of Southern California, USA; Martin Lages, University of Glasgow, UK
ISSN:1664-1078
1664-1078
DOI:10.3389/fpsyg.2016.00755