The high-conductance state enables neural sampling in networks of LIF neurons
Mihai A. Petrovici, Ilja Bytschok, Johannes Bill, Johannes Schemmel, and Karlheinz Meier

TL;DR
This paper demonstrates that in high-conductance states, networks of LIF neurons can perform neural sampling by exhibiting a logistic response function, bridging biological neural activity with probabilistic inference and neuromorphic applications.
Contribution
It introduces a novel analytical approach considering burst spiking and quiescence modes, showing how high-conductance states enable neural sampling in LIF neuron networks.
Findings
Neural response function closely matches simulation data.
In high-conductance states, the response becomes symmetric and logistic.
Provides a normative framework for Bayesian inference in cortex.
Abstract
The apparent stochasticity of in-vivo neural circuits has long been hypothesized to represent a signature of ongoing stochastic inference in the brain. More recently, a theoretical framework for neural sampling has been proposed, which explains how sample-based inference can be performed by networks of spiking neurons. One particular requirement of this approach is that the neural response function closely follows a logistic curve. Analytical approaches to calculating neural response functions have been the subject of many theoretical studies. In order to make the problem tractable, particular assumptions regarding the neural or synaptic parameters are usually made. However, biologically significant activity regimes exist which are not covered by these approaches: Under strong synaptic bombardment, as is often the case in cortex, the neuron is shifted into a high-conductance state…
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