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One-dimensional population density approaches to recurrently coupled networks of neurons with noise. (English) Zbl 1352.37199

MSC:
37N25 Dynamical systems in biology
92C20 Neural biology
Software:
AUTO; AUTO-86; MATCONT
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References:
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