Subject: bepress|Life Sciences|Biology | bepress|Life Sciences|Neuroscience and Neurobiology | Research Article | modeling | Computational and Systems Biology | recurrent neural networks | cognition | Neuroscience | learning | computational neuroscience | None
Neural activity during cognitive tasks exhibits complex dynamics that flexibly encode task-relevant variables. Recurrent neural networks operating in the near-chaotic regime, which spontaneously generate rich dynamics, have been proposed as a model of cortical computati... View more
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