Prominent characteristics of recurrent neuronal networks are robust against low synaptic weight resolution
Stefan Dasbach, Tom Tetzlaff, Markus Diesmann, Johanna Senk

TL;DR
This study shows that discretizing synaptic weights in recurrent neuronal networks can preserve network dynamics if done carefully, reducing memory demands without significantly altering firing statistics.
Contribution
It introduces strategies for discretizing synaptic weights that maintain network dynamics, addressing challenges in large-scale neural simulations and neuromorphic computing.
Findings
Discretization preserving mean and variance maintains firing statistics.
Naive discretization distorts spike-train statistics.
Heterogeneous in-degree networks tolerate weight discretization better.
Abstract
The representation of the natural-density, heterogeneous connectivity of neuronal network models at relevant spatial scales remains a challenge for Computational Neuroscience and Neuromorphic Computing. In particular, the memory demands imposed by the vast number of synapses in brain-scale network simulations constitutes a major obstacle. Limiting the number resolution of synaptic weights appears to be a natural strategy to reduce memory and compute load. In this study, we investigate the effects of a limited synaptic-weight resolution on the dynamics of recurrent spiking neuronal networks resembling local cortical circuits, and develop strategies for minimizing deviations from the dynamics of networks with high-resolution synaptic weights. We mimic the effect of a limited synaptic weight resolution by replacing normally distributed synaptic weights by weights drawn from a discrete…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · Neuroscience and Neural Engineering
