Logo del repository
  1. Home
 
Opzioni

A Bayesian foundation for individual learning under uncertainty

Mathys, Christoph Daniel
•
Daunizeau, Jean
•
Friston, Karl J
•
Stephan, Klaas E.
2011
  • journal article

Periodico
FRONTIERS IN HUMAN NEUROSCIENCE
Abstract
Computational learning models are critical for understanding mechanisms of adaptive behavior. However, the two major current frameworks, reinforcement learning (RL) and Bayesian learning, both have certain limitations. For example, many Bayesian models are agnostic of inter-individual variability and involve complicated integrals, making online learning difficult. Here, we introduce a generic hierarchical Bayesian framework for individual learning under multiple forms of uncertainty (e.g., environmental volatility and perceptual uncertainty). The model assumes Gaussian random walks of states at all but the first level, with the step size determined by the next highest level. The coupling between levels is controlled by parameters that shape the influence of uncertainty on learning in a subject-specific fashion. Using variational Bayes under a mean-field approximation and a novel approximation to the posterior energy function, we derive trial-by-trial update equations which (i) are analytical and extremely efficient, enabling real-time learning, (ii) have a natural interpretation in terms of RL, and (iii) contain parameters representing processes which play a key role in current theories of learning, e.g., precision-weighting of prediction error. These parameters allow for the expression of individual differences in learning and may relate to specific neuromodulatory mechanisms in the brain. Our model is very general: it can deal with both discrete and continuous states and equally accounts for deterministic and probabilistic relations between environmental events and perceptual states (i.e., situations with and without perceptual uncertainty). These properties are illustrated by simulations and analyses of empirical time series. Overall, our framework provides a novel foundation for understanding normal and pathological learning that contextualizes RL within a generic Bayesian scheme and thus connects it to principles of optimality from probability theory.
DOI
10.3389/fnhum.2011.00039
WOS
WOS:000290218000001
Archivio
http://hdl.handle.net/20.500.11767/47888
info:eu-repo/semantics/altIdentifier/scopus/2-s2.0-82955235655
Diritti
open access
Soggetti
  • acetylcholine

  • decision-making

  • dopamine

  • hierarchical model

  • neuromodulation

  • serotonin

  • variational Baye

  • volatility

  • Settore M-PSI/02 - Ps...

Scopus© citazioni
293
La settimana scorsa
1
Data di acquisizione
Jun 14, 2022
Vedi dettagli
Web of Science© citazioni
373
Data di acquisizione
Mar 18, 2024
google-scholar
Get Involved!
  • Source Code
  • Documentation
  • Slack Channel
Make it your own

DSpace-CRIS can be extensively configured to meet your needs. Decide which information need to be collected and available with fine-grained security. Start updating the theme to match your nstitution's web identity.

Need professional help?

The original creators of DSpace-CRIS at 4Science can take your project to the next level, get in touch!

Realizzato con Software DSpace-CRIS - Estensione mantenuta e ottimizzata da 4Science

  • Impostazioni dei cookie
  • Informativa sulla privacy
  • Accordo con l'utente finale
  • Invia il tuo Feedback