Inferring learning rules from distributions of firing rates in cortical neurons.
Abstract
Information about external stimuli is thought to be stored in cortical circuits through
experience-dependent modifications of synaptic connectivity. These modifications of
network connectivity should lead to changes in neuronal activity as a particular stimulus
is repeatedly encountered. Here we ask what plasticity rules are consistent with the
differences in the statistics of the visual response to novel and familiar stimuli
in inferior temporal cortex, an area underlying visual object recognition. We introduce
a method that allows one to infer the dependence of the presumptive learning rule
on postsynaptic firing rate, and we show that the inferred learning rule exhibits
depression for low postsynaptic rates and potentiation for high rates. The threshold
separating depression from potentiation is strongly correlated with both mean and
s.d. of the firing rate distribution. Finally, we show that network models implementing
a rule extracted from data show stable learning dynamics and lead to sparser representations
of stimuli.
Type
Journal articlePermalink
https://hdl.handle.net/10161/15107Published Version (Please cite this version)
10.1038/nn.4158Publication Info
Lim, Sukbin; McKee, Jillian L; Woloszyn, Luke; Amit, Yali; Freedman, David J; Sheinberg,
David L; & Brunel, Nicolas (2015). Inferring learning rules from distributions of firing rates in cortical neurons. Nat Neurosci, 18(12). pp. 1804-1810. 10.1038/nn.4158. Retrieved from https://hdl.handle.net/10161/15107.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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