Adding Prediction Risk to the Theory of Reward Learning
- 1 May 2007
- journal article
- review article
- Published by Wiley in Annals of the New York Academy of Sciences
- Vol. 1104 (1) , 135-146
- https://doi.org/10.1196/annals.1390.005
Abstract
Abstract: This article analyzes the simple Rescorla–Wagner learning rule from the vantage point of least squares learning theory. In particular, it suggests how measures of risk, such as prediction risk, can be used to adjust the learning constant in reinforcement learning. It argues that prediction risk is most effectively incorporated by scaling the prediction errors. This way, the learning rate needs adjusting only when the covariance between optimal predictions and past (scaled) prediction errors changes. Evidence is discussed that suggests that the dopaminergic system in the (human and nonhuman) primate brain encodes prediction risk, and that prediction errors are indeed scaled with prediction risk (adaptive encoding).Keywords
This publication has 19 references indexed in Scilit:
- The Neural Basis of Financial Risk TakingNeuron, 2005
- Decisions under Uncertainty: Probabilistic Context Influences Activation of Prefrontal and Parietal CorticesJournal of Neuroscience, 2005
- Adaptive Coding of Reward Value by Dopamine NeuronsScience, 2005
- Computational roles for dopamine in behavioural controlNature, 2004
- Neural coding of basic reward terms of animal learning theory, game theory, microeconomics and behavioural ecologyCurrent Opinion in Neurobiology, 2004
- Discrete Coding of Reward Probability and Uncertainty by Dopamine NeuronsScience, 2003
- Anatomy of the insula functional and clinical correlatesAphasiology, 1999
- Foundations of Portfolio TheoryThe Journal of Finance, 1991
- Foundations of Portfolio TheoryThe Journal of Finance, 1991
- Mean-Variance Versus Direct Utility MaximizationThe Journal of Finance, 1984