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arxiv: 1604.07300 · v2 · pith:BTXKERWMnew · submitted 2016-04-25 · 🧮 math.ST · stat.TH

Non-parametric estimation of the spiking rate in systems of interacting neurons

classification 🧮 math.ST stat.TH
keywords neuronsratemembraneneuronpotentialestimationjumpconvergence
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We consider a model of interacting neurons where the membrane potentials of the neurons are described by a multidimensional piecewise deterministic Markov process (PDMP) with values in ${\mathbb R}^N, $ where $ N$ is the number of neurons in the network. A deterministic drift attracts each neuron's membrane potential to an equilibrium potential $m.$ When a neuron jumps, its membrane potential is reset to $0,$ while the other neurons receive an additional amount of potential $\frac{1}{N}.$ We are interested in the estimation of the jump (or spiking) rate of a single neuron based on an observation of the membrane potentials of the $N$ neurons up to time $t.$ We study a Nadaraya-Watson type kernel estimator for the jump rate and establish its rate of convergence in $L^2 .$ This rate of convergence is shown to be optimal for a given H\"older class of jump rate functions. We also obtain a central limit theorem for the error of estimation. The main probabilistic tools are the uniform ergodicity of the process and a fine study of the invariant measure of a single neuron.

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