Literature DB >> 23345226

Covariance-based synaptic plasticity in an attractor network model accounts for fast adaptation in free operant learning.

Tal Neiman1, Yonatan Loewenstein.   

Abstract

In free operant experiments, subjects alternate at will between targets that yield rewards stochastically. Behavior in these experiments is typically characterized by (1) an exponential distribution of stay durations, (2) matching of the relative time spent at a target to its relative share of the total number of rewards, and (3) adaptation after a change in the reward rates that can be very fast. The neural mechanism underlying these regularities is largely unknown. Moreover, current decision-making neural network models typically aim at explaining behavior in discrete-time experiments in which a single decision is made once in every trial, making these models hard to extend to the more natural case of free operant decisions. Here we show that a model based on attractor dynamics, in which transitions are induced by noise and preference is formed via covariance-based synaptic plasticity, can account for the characteristics of behavior in free operant experiments. We compare a specific instance of such a model, in which two recurrently excited populations of neurons compete for higher activity, to the behavior of rats responding on two levers for rewarding brain stimulation on a concurrent variable interval reward schedule (Gallistel et al., 2001). We show that the model is consistent with the rats' behavior, and in particular, with the observed fast adaptation to matching behavior. Further, we show that the neural model can be reduced to a behavioral model, and we use this model to deduce a novel "conservation law," which is consistent with the behavior of the rats.

Entities:  

Mesh:

Year:  2013        PMID: 23345226      PMCID: PMC6618748          DOI: 10.1523/JNEUROSCI.2068-12.2013

Source DB:  PubMed          Journal:  J Neurosci        ISSN: 0270-6474            Impact factor:   6.167


  8 in total

1.  Spatial generalization in operant learning: lessons from professional basketball.

Authors:  Tal Neiman; Yonatan Loewenstein
Journal:  PLoS Comput Biol       Date:  2014-05-22       Impact factor: 4.475

2.  Striatal action-value neurons reconsidered.

Authors:  Lotem Elber-Dorozko; Yonatan Loewenstein
Journal:  Elife       Date:  2018-05-31       Impact factor: 8.140

3.  Vague-to-crisp dynamics of percept formation modeled as operant (selectionist) process.

Authors:  Roman Ilin; Jun Zhang; Leonid Perlovsky; Robert Kozma
Journal:  Cogn Neurodyn       Date:  2013-08-04       Impact factor: 5.082

4.  Dynamical regimes in neural network models of matching behavior.

Authors:  Kiyohito Iigaya; Stefano Fusi
Journal:  Neural Comput       Date:  2013-09-18       Impact factor: 2.026

5.  Stochasticity, bistability and the wisdom of crowds: a model for associative learning in genetic regulatory networks.

Authors:  Matan Sorek; Nathalie Q Balaban; Yonatan Loewenstein
Journal:  PLoS Comput Biol       Date:  2013-08-22       Impact factor: 4.475

6.  Deviation from the matching law reflects an optimal strategy involving learning over multiple timescales.

Authors:  Kiyohito Iigaya; Yashar Ahmadian; Leo P Sugrue; Greg S Corrado; Yonatan Loewenstein; William T Newsome; Stefano Fusi
Journal:  Nat Commun       Date:  2019-04-01       Impact factor: 14.919

7.  A multistep general theory of transition to addiction.

Authors:  Pier Vincenzo Piazza; Véronique Deroche-Gamonet
Journal:  Psychopharmacology (Berl)       Date:  2013-08-21       Impact factor: 4.530

8.  Adaptive learning and decision-making under uncertainty by metaplastic synapses guided by a surprise detection system.

Authors:  Kiyohito Iigaya
Journal:  Elife       Date:  2016-08-09       Impact factor: 8.140

  8 in total

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