NCNEOct 21, 2014

Logarithmic distributions prove that intrinsic learning is Hebbian

arXiv:1410.5610v325 citations
Originality Incremental advance
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This solves a long-standing question in neuroscience about intrinsic plasticity, with implications for understanding learning mechanisms in the brain.

The authors tackled the problem of identifying the plasticity type for intrinsic excitability by analyzing lognormal distributions of neural properties across brain areas, and demonstrated that strong Hebbian learning is necessary to produce and maintain these distributions.

In this paper, we present data for the lognormal distributions of spike rates, synaptic weights and intrinsic excitability (gain) for neurons in various brain areas, such as auditory or visual cortex, hippocampus, cerebellum, striatum, midbrain nuclei. We find a remarkable consistency of heavy-tailed, specifically lognormal, distributions for rates, weights and gains in all brain areas examined. The difference between strongly recurrent and feed-forward connectivity (cortex vs. striatum and cerebellum), neurotransmitter (GABA (striatum) or glutamate (cortex)) or the level of activation (low in cortex, high in Purkinje cells and midbrain nuclei) turns out to be irrelevant for this feature. Logarithmic scale distribution of weights and gains appears to be a general, functional property in all cases analyzed. We then created a generic neural model to investigate adaptive learning rules that create and maintain lognormal distributions. We conclusively demonstrate that not only weights, but also intrinsic gains, need to have strong Hebbian learning in order to produce and maintain the experimentally attested distributions. This provides a solution to the long-standing question about the type of plasticity exhibited by intrinsic excitability.

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