Network algorithmics and the emergence of the cortical synaptic-weight distribution
Andre Nathan, Valmir C. Barbosa

TL;DR
This paper presents a network model demonstrating how global network interactions can lead to the emergence of the experimentally observed long-tailed distribution of cortical synaptic weights, without relying on local causality assumptions.
Contribution
It introduces a causally global network model that explains synaptic weight distribution emergence based on network structure and function, differing from prior local causality models.
Findings
Model reproduces experimentally observed weight distribution
Distribution arises from network-wide causal chains
Highlights importance of network structure in synaptic dynamics
Abstract
When a neuron fires and the resulting action potential travels down its axon toward other neurons' dendrites, the effect on each of those neurons is mediated by the weight of the synapse that separates it from the firing neuron. This weight, in turn, is affected by the postsynaptic neuron's response through a mechanism that is thought to underlie important processes such as learning and memory. Although of difficult quantification, cortical synaptic weights have been found to obey a long-tailed unimodal distribution peaking near the lowest values, thus confirming some of the predictive models built previously. These models are all causally local, in the sense that they refer to the situation in which a number of neurons all fire directly at the same postsynaptic neuron. Consequently, they necessarily embody assumptions regarding the generation of action potentials by the presynaptic…
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