Democratic population decisions result in robust policy-gradient learning (Richmond et al. 2011)

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Accession:136807
This model demonstrates the use of GPU programming (with CUDA) to simulate a two-layer network of Integrate-and-Fire neurons with varying degrees of recurrent connectivity and to investigate its ability to learn a simplified navigation task using a learning rule stemming from Reinforcement Learning, a policy-gradient rule.
Reference:
1 . Richmond P, Buesing L, Giugliano M, Vasilaki E (2011) Democratic population decisions result in robust policy-gradient learning: a parametric study with GPU simulations. PLoS One 6:e18539 [PubMed]
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Simulation Environment: C or C++ program;
Model Concept(s): Learning; Winner-take-all;
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