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Local unsupervised learning rules for a spiking neural network with dendrite

โœ Scribed by Olivier FL Manette


Publisher
BioMed Central
Year
2011
Tongue
English
Weight
316 KB
Volume
12
Category
Article
ISSN
1471-2202

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โœฆ Synopsis


How could synapse number and position on a dendrite affect neuronal behavior with respect to the decoding of firing rate and temporal pattern? We developed a model of a neuron with a passive dendrite and found that dendritic length and the particular synapse positions directly determine the behavior of the neuron in response to patterns of received inputs. We revealed two distinct types of behavior by simply modifying the


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