Context-dependent decision-making:a simple Bayesian model

Lloyd, Kevin and Leslie, David. S. (2013) Context-dependent decision-making:a simple Bayesian model. Interface, 10 (82). pp. 1-13. ISSN 1742-5689

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Abstract

Many phenomena in animal learning can be explained by a context-learning process whereby an animal learns about different patterns of relationship between environmental variables. Differentiating between such environmental regimes or ‘contexts’ allows an animal to rapidly adapt its behaviour when context changes occur. The current work views animals as making sequential inferences about current context identity in a world assumed to be relatively stable but also capable of rapid switches to previously observed or entirely new contexts. We describe a novel decision-making model in which contexts are assumed to follow a Chinese restaurant process with inertia and full Bayesian inference is approximated by a sequential-sampling scheme in which only a single hypothesis about current context is maintained. Actions are selected via Thompson sampling, allowing uncertainty in parameters to drive exploration in a straightforward manner. The model is tested on simple two-alternative choice problems with switching reinforcement schedules and the results compared with rat behavioural data from a number of T-maze studies. The model successfully replicates a number of important behavioural effects: spontaneous recovery, the effect of partial reinforcement on extinction and reversal, the overtraining reversal effect, and serial reversal-learning effects.

Item Type:
Journal Article
Journal or Publication Title:
Interface
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1300/1304
Subjects:
?? BAYESIAN DECISION-MAKINGSPONTANEOUS RECOVERYREVERSAL LEARNINGCHINESE RESTAURANT PROCESSTHOMPSON SAMPLINGBIOMEDICAL ENGINEERINGBIOCHEMISTRYBIOMATERIALSBIOENGINEERINGBIOTECHNOLOGYBIOPHYSICS ??
ID Code:
70684
Deposited By:
Deposited On:
08 Sep 2014 11:15
Refereed?:
Yes
Published?:
Published
Last Modified:
20 Sep 2023 00:38