Response nonlinearities in networks of spiking neurons.
Abstract
Combining information from multiple sources is a fundamental operation performed by
networks of neurons in the brain, whose general principles are still largely unknown.
Experimental evidence suggests that combination of inputs in cortex relies on nonlinear
summation. Such nonlinearities are thought to be fundamental to perform complex computations.
However, these non-linearities are inconsistent with the balanced-state model, one
of the most popular models of cortical dynamics, which predicts networks have a linear
response. This linearity is obtained in the limit of very large recurrent coupling
strength. We investigate the stationary response of networks of spiking neurons as
a function of coupling strength. We show that, while a linear transfer function emerges
at strong coupling, nonlinearities are prominent at finite coupling, both at response
onset and close to saturation. We derive a general framework to classify nonlinear
responses in these networks and discuss which of them can be captured by rate models.
This framework could help to understand the observed diversity of non-linearities
observed in cortical networks.
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https://hdl.handle.net/10161/21552Published Version (Please cite this version)
10.1371/journal.pcbi.1008165Publication Info
Sanzeni, Alessandro; Histed, Mark H; & Brunel, Nicolas (2020). Response nonlinearities in networks of spiking neurons. PLoS computational biology, 16(9). pp. e1008165. 10.1371/journal.pcbi.1008165. Retrieved from https://hdl.handle.net/10161/21552.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Show full item recordScholars@Duke
Nicolas Brunel
Duke School of Medicine Distinguished Professor in Neuroscience
We use theoretical models of brain systems to investigate how they process and learn
information from their inputs. Our current work focuses on the mechanisms of learning
and memory, from the synapse to the network level, in collaboration with various experimental
groups. Using methods fromstatistical physics, we have shown recently that the synapticconnectivity
of a network that maximizes storage capacity reproducestwo key experimentally observed
features: low connection proba

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