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      Synaptic Theory of Replicator-Like Melioration

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          Abstract

          According to the theory of Melioration, organisms in repeated choice settings shift their choice preference in favor of the alternative that provides the highest return. The goal of this paper is to explain how this learning behavior can emerge from microscopic changes in the efficacies of synapses, in the context of a two-alternative repeated-choice experiment. I consider a large family of synaptic plasticity rules in which changes in synaptic efficacies are driven by the covariance between reward and neural activity. I construct a general framework that predicts the learning dynamics of any decision-making neural network that implements this synaptic plasticity rule and show that melioration naturally emerges in such networks. Moreover, the resultant learning dynamics follows the Replicator equation which is commonly used to phenomenologically describe changes in behavior in operant conditioning experiments. Several examples demonstrate how the learning rate of the network is affected by its properties and by the specifics of the plasticity rule. These results help bridge the gap between cellular physiology and learning behavior.

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          Most cited references26

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          Probabilistic decision making by slow reverberation in cortical circuits.

          Recent physiological studies of alert primates have revealed cortical neural correlates of key steps in a perceptual decision-making process. To elucidate synaptic mechanisms of decision making, I investigated a biophysically realistic cortical network model for a visual discrimination experiment. In the model, slow recurrent excitation and feedback inhibition produce attractor dynamics that amplify the difference between conflicting inputs and generates a binary choice. The model is shown to account for salient characteristics of the observed decision-correlated neural activity, as well as the animal's psychometric function and reaction times. These results suggest that recurrent excitation mediated by NMDA receptors provides a candidate cellular mechanism for the slow time integration of sensory stimuli and the formation of categorical choices in a decision-making neocortical network.
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            Relative and absolute strength of response as a function of frequency of reinforcement.

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              Matching behavior and the representation of value in the parietal cortex.

              Psychologists and economists have long appreciated the contribution of reward history and expectation to decision-making. Yet we know little about how specific histories of choice and reward lead to an internal representation of the "value" of possible actions. We approached this problem through an integrated application of behavioral, computational, and physiological techniques. Monkeys were placed in a dynamic foraging environment in which they had to track the changing values of alternative choices through time. In this context, the monkeys' foraging behavior provided a window into their subjective valuation. We found that a simple model based on reward history can duplicate this behavior and that neurons in the parietal cortex represent the relative value of competing actions predicted by this model.
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                Author and article information

                Journal
                Front Comput Neurosci
                Front. Comput. Neurosci.
                Frontiers in Computational Neuroscience
                Frontiers Research Foundation
                1662-5188
                07 April 2010
                17 June 2010
                2010
                : 4
                : 17
                Affiliations
                [1] 1simpleDepartments of Neurobiology and Cognitive Sciences, the Interdisciplinary Center for Neural Computation and the Center for the Study of Rationality, Hebrew University Jerusalem, Israel
                Author notes

                Edited by: David Hansel, University of Paris, France

                Reviewed by: Maoz Shamir, Boston University, USA; Gianluigi Mongillo, University of Paris, France

                *Correspondence: Yonatan Loewenstein, Department of Neurobiology, Hebrew University, Jerusalem, 91904, Israel. e-mail: yonatan@ 123456huji.ac.il
                Article
                10.3389/fncom.2010.00017
                2896075
                20617184
                f1aa8594-c577-4051-9f07-ef8332ef556f
                Copyright © 2010 Loewenstein.

                This is an open-access article subject to an exclusive license agreement between the authors and the Frontiers Research Foundation, which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and source are credited.

                History
                : 01 April 2010
                : 25 May 2010
                Page count
                Figures: 3, Tables: 0, Equations: 71, References: 43, Pages: 12, Words: 8341
                Categories
                Neuroscience
                Original Research

                Neurosciences
                synaptic plasticity,operant conditioning,reinforcement learning
                Neurosciences
                synaptic plasticity, operant conditioning, reinforcement learning

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