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Bayesian statistics / Science / Behavioral finance / Probability interpretations / Measurement / Uncertainty / Prior probability / Decision making / Gambling / Statistics / Decision theory / Probability and statistics
Date: 2011-07-20 05:44:44
Bayesian statistics
Science
Behavioral finance
Probability interpretations
Measurement
Uncertainty
Prior probability
Decision making
Gambling
Statistics
Decision theory
Probability and statistics

Learning Under Uncertainty: A model-based approach for understanding gambling behaviour Erica C. Yu, David Lagnado, & Nick Chater Department of Cognitive, Perceptual and Brain Sciences University College London

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