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Model-based spatial navigation in the hippocampus-ventral striatum circuit: A computational analysis

Ivilin Peev Stoianov, Cyriel M A Pennartz, Carien S Lansink and Giovani Pezzulo

PLOS Computational Biology, 2018, vol. 14, issue 9, 1-28

Abstract: While the neurobiology of simple and habitual choices is relatively well known, our current understanding of goal-directed choices and planning in the brain is still limited. Theoretical work suggests that goal-directed computations can be productively associated to model-based (reinforcement learning) computations, yet a detailed mapping between computational processes and neuronal circuits remains to be fully established. Here we report a computational analysis that aligns Bayesian nonparametrics and model-based reinforcement learning (MB-RL) to the functioning of the hippocampus (HC) and the ventral striatum (vStr)–a neuronal circuit that increasingly recognized to be an appropriate model system to understand goal-directed (spatial) decisions and planning mechanisms in the brain. We test the MB-RL agent in a contextual conditioning task that depends on intact hippocampus and ventral striatal (shell) function and show that it solves the task while showing key behavioral and neuronal signatures of the HC—vStr circuit. Our simulations also explore the benefits of biological forms of look-ahead prediction (forward sweeps) during both learning and control. This article thus contributes to fill the gap between our current understanding of computational algorithms and biological realizations of (model-based) reinforcement learning.Author summary: Computational reinforcement learning theories have contributed to advance our understanding of how the brain implements decisions—and especially simple and habitual choices. However, our current understanding of the neural and computational principles of complex and flexible (goal-directed) choices is comparatively less advanced. Here we design and test a novel (model-based) reinforcement learning model, and align its learning and control mechanisms to the functioning of the neural circuit formed by the hippocampus and the ventral striatum in rodents—which is key to goal-directed spatial cognition. In a series of simulations, we show that our model-based reinforcement learning agent replicates multi-level constraints (behavioral, neural, systems) emerged from rodent cue- and context- conditioning studies, thus contributing to establish a map between computational and neuronal mechanisms of goal-directed spatial cognition.

Date: 2018
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pcbi00:1006316

DOI: 10.1371/journal.pcbi.1006316

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