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. 1978 Nov-Dec;23(6):1069-75.

[Network of plastic neurons capable of forming conditioned reflexes ("membrane" model of learning)]

[Article in Russian]
  • PMID: 719022

[Network of plastic neurons capable of forming conditioned reflexes ("membrane" model of learning)]

[Article in Russian]
E G Litvinov et al. Biofizika. 1978 Nov-Dec.

Abstract

Simple net neuronal model was suggested which was able to form the conditioning due to changes of the neuron excitability. The model was based on the following main concepts: (a) the conditioning formation should result in reduction of the firing threshold in the same neurons where the conditioning and reinforcement stimuli were converged, (b) neuron threshold may have only two possible states: initial and final ones, these were identical for all cells, the threshold may be changed only once from the initial value to the final one, (c) isomorphous relation may be introduced between some pair of arbitrary stimuli and some subset of the net neurons; any two pairs differing at least in one stimulus have unlike subsets of the convergent neurons. Stochastically organized neuronal net was used for analysis of the model. Considerable information capacity of the net gives the opportunity to consider that the conditioning formation is possible on the basis of the nervous cells. The efficienty of the model turn out to be comparable with the well known models where the conditioning formation was due to the modification of the synapses.

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