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      Mechanisms of hierarchical reinforcement learning in corticostriatal circuits 1: computational analysis.

      Cerebral Cortex (New York, NY)
      Computer Simulation, Corpus Striatum, cytology, physiology, Humans, Learning, Models, Neurological, Neural Pathways, Neurons, Prefrontal Cortex, Reinforcement (Psychology)

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          Abstract

          Growing evidence suggests that the prefrontal cortex (PFC) is organized hierarchically, with more anterior regions having increasingly abstract representations. How does this organization support hierarchical cognitive control and the rapid discovery of abstract action rules? We present computational models at different levels of description. A neural circuit model simulates interacting corticostriatal circuits organized hierarchically. In each circuit, the basal ganglia gate frontal actions, with some striatal units gating the inputs to PFC and others gating the outputs to influence response selection. Learning at all of these levels is accomplished via dopaminergic reward prediction error signals in each corticostriatal circuit. This functionality allows the system to exhibit conditional if-then hypothesis testing and to learn rapidly in environments with hierarchical structure. We also develop a hybrid Bayesian-reinforcement learning mixture of experts (MoE) model, which can estimate the most likely hypothesis state of individual participants based on their observed sequence of choices and rewards. This model yields accurate probabilistic estimates about which hypotheses are attended by manipulating attentional states in the generative neural model and recovering them with the MoE model. This 2-pronged modeling approach leads to multiple quantitative predictions that are tested with functional magnetic resonance imaging in the companion paper.

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          Author and article information

          Journal
          21693490
          3278315
          10.1093/cercor/bhr114

          Chemistry
          Computer Simulation,Corpus Striatum,cytology,physiology,Humans,Learning,Models, Neurological,Neural Pathways,Neurons,Prefrontal Cortex,Reinforcement (Psychology)

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