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arxiv 2106.08937 v1 pith:FX5V6ZPK submitted 2021-06-16 cs.NE cs.LGnlin.CD

A Predictive Coding Account for Chaotic Itinerancy

classification cs.NE cs.LGnlin.CD
keywords chaoticcodingitinerancypredictiveneuralphenomenonswitchingtrajectories
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As a phenomenon in dynamical systems allowing autonomous switching between stable behaviors, chaotic itinerancy has gained interest in neurorobotics research. In this study, we draw a connection between this phenomenon and the predictive coding theory by showing how a recurrent neural network implementing predictive coding can generate neural trajectories similar to chaotic itinerancy in the presence of input noise. We propose two scenarios generating random and past-independent attractor switching trajectories using our model.

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