We propose an approach for the development of dynamic representations which are predictive for future sensory inputs. The prediction error allows to restructure both internal and input connectivity such that from the initially unstable dynamicsof a random network a reliable behavior is obtained after learning. In particular we consider the self-organization of connectivities similar to synfire chains (for linear sequences of inputs) or effectively two-dimensional neural layers (for data froman autonomous robot in a maze).
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