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arxiv: 1311.3211 · v1 · pith:CTE5EMCKnew · submitted 2013-11-13 · 🧬 q-bio.NC · cond-mat.dis-nn· cs.NE· physics.bio-ph· stat.ML

Stochastic inference with deterministic spiking neurons

classification 🧬 q-bio.NC cond-mat.dis-nncs.NEphysics.bio-phstat.ML
keywords deterministicstochasticinferenceneuronsdynamicslevelspikingactivation
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The seemingly stochastic transient dynamics of neocortical circuits observed in vivo have been hypothesized to represent a signature of ongoing stochastic inference. In vitro neurons, on the other hand, exhibit a highly deterministic response to various types of stimulation. We show that an ensemble of deterministic leaky integrate-and-fire neurons embedded in a spiking noisy environment can attain the correct firing statistics in order to sample from a well-defined target distribution. We provide an analytical derivation of the activation function on the single cell level; for recurrent networks, we examine convergence towards stationarity in computer simulations and demonstrate sample-based Bayesian inference in a mixed graphical model. This establishes a rigorous link between deterministic neuron models and functional stochastic dynamics on the network level.

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