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Self-organization of day cycle and hierarchical associative memory in “live” neural network

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Abstract

The “live” neural network model is proposed on the basis of “live” neuron model and optimal learning rule. By means of numerical simulation the initial stages of neural network self-organization have been shown: (1) the formation of two activity forms, which are identified with sleep and awaking, and (2) the self-organization of hierarchical associative memory when feeding a receptor excitation to the neural network. The energetic profit of self-organization is demonstrated. The formation of neural ensembles, playing the role of generalized neurons, is obtained.

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References

  • Emelyanov-Yaroslavsky LB (1961) Organization of self-learning automaton using computer. Voprosy radioelektroniki, ser. 7, vyp. 3 (in Russian)

  • Emelyanov-Yaroslavsky LB, Potapov VI (1989) Research of static properties of neural networks with inhibitory links. In: Vychislitelnaya tekhnika i kraevye zadachi. Melody i multiprocessornye sredstva. Riga, pp 57–67 (in Russian)

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  • Emelyanov-Yaroslavsky LB, Potapov VI (1990) “Live” neuron and optimal learning rule. Biol Cybern (this issue)

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Emelyanov-Yaroslavsky, L.B., Potapov, V.I. Self-organization of day cycle and hierarchical associative memory in “live” neural network. Biol. Cybern. 67, 73–81 (1992). https://doi.org/10.1007/BF00201804

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  • DOI: https://doi.org/10.1007/BF00201804

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