Output Stream of Binding Neuron with Feedback
Alexander K. Vidybida

TL;DR
This paper analyzes the output spike statistics of a binding neuron with feedback driven by Poisson input, showing how feedback significantly alters firing patterns and discussing implications for neural information processing.
Contribution
It provides an exact mathematical description of the output spike distribution for a binding neuron with feedback, extending previous models and exploring the effects of feedback on neural firing statistics.
Findings
Feedback changes interspike interval distribution
Exact distribution derived for threshold 2 neuron
Numerical results for higher thresholds and leaky integrator
Abstract
The binding neuron model is inspired by numerical simulation of Hodgkin-Huxley-type point neuron, as well as by the leaky integrate-and-fire model. In the binding neuron, the trace of an input is remembered for a fixed period of time after which it disappears completely. This is in the contrast with the above two models, where the postsynaptic potentials decay exponentially and can be forgotten only after triggering. The finiteness of memory in the binding neuron allows one to construct fast recurrent networks for computer modeling. Recently, the finiteness is utilized for exact mathematical description of the output stochastic process if the binding neuron is driven with the Poissonian input stream. In this paper, the simplest networking is considered for binding neuron. Namely, it is expected that every output spike of single neuron is immediately fed into its input. For this…
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