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Estimating the interaction graph of stochastic neural dynamics

机译:估计随机神经动力学的相互作用图

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摘要

In this paper, we address the question of statistical model selection for a class of stochastic models of biological neural nets. Models in this class are systems of interacting chains with memory of variable length. Each chain describes the activity of a single neuron, indicating whether it spikes or not at a given time. The spiking probability of a given neuron depends on the time evolution of its presynaptic neurons since its last spike time. When a neuron spikes, its potential is reset to a resting level and postsynaptic current pulses are generated, modifying the membrane potential of all its postsynaptic neurons. The relationship between a neuron and its pre- and postsynaptic neurons defines an oriented graph, the interaction graph of the model. The goal of this paper is to estimate this graph based on the observation of the spike activity of a finite set of neurons over a finite time. We provide explicit exponential upper bounds for the probabilities of under- and overestimating the interaction graph restricted to the observed set and obtain the strong consistency of the estimator. Our result does not require stationarity nor uniqueness of the invariant measure of the process.
机译:在本文中,我们解决了一类生物神经网络随机模型的统计模型选择问题。本类中的模型是与可变长度的内存交互链接的系统。每种链描述单个神经元的活性,表明它是否在给定时间飙升。给定神经元的尖峰概率取决于其突触前神经元的时间进化,因为它是最后的穗时间。当神经元尖峰时,其电位重置为静止水平,并且产生后腹膜电流脉冲,改变其所有突触后神经元的膜电位。神经元与其前后神经元之间的关系定义了型号的定向图,模型的相互作用图。本文的目的是基于在有限时间内观察有限一组神经元的尖峰活动来估计该图。我们提供明确的指数上限,以获得概率的概率,并且估计被限制为观察到的集合并获得估计器的强趋势。我们的结果不需要实质性和过程不变度量的唯一性。

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