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Information transmission and detection thresholds in the vestibular nuclei: single neurons vs. population encoding.Analytical reconstruction of the neuronal input current from spike train data.How noisy adaptation of neurons shapes interspike interval histograms and correlations.Pre & postsynaptic tuning of action potential timing by spontaneous GABAergic activityBalanced excitatory and inhibitory synaptic currents promote efficient coding and metabolic efficiency.Self-tuning of inhibition by endocannabinoids shapes spike-time precision in CA1 pyramidal neurons.The response of cortical neurons to in vivo-like input current: theory and experiment : I. Noisy inputs with stationary statistics.The frequency response function and sinusoidal threshold properties of the Hodgkin-Huxley model of action potential encoding.Neuronal spike-train responses in the presence of threshold noise.Point process models of single-neuron discharges.Threshold fatigue and information transfer.Maximum likelihood analysis of spike trains of interacting nerve cells.Statistical inference on spontaneous neuronal discharge patterns. I. Single neuron.A generalized linear integrate-and-fire neural model produces diverse spiking behaviors.Delayed excitatory and inhibitory feedback shape neural information transmission.Mechanisms of electrical stimulation with neural prostheses.A general diffusion model for analyzing the efficacy of synaptic input to threshold neurons.Variable initial depolarization in Stein's neuronal model with synaptic reversal potentials.Noise in genetic and neural networks.Exact analytical results for integrate-and-fire neurons driven by excitatory shot noise.Statistics of a neuron model driven by asymmetric colored noise.Mean, variance, and autocorrelation of subthreshold potential fluctuations driven by filtered conductance shot noise.Evoking prescribed spike times in stochastic neurons.Neuronal model with distributed delay: analysis and simulation study for gamma distribution memory kernel.Dynamics of neural populations: stability and synchrony.Note on the coefficient of variations of neuronal spike trains.Delayed-exponential approximation of a linear homogeneous diffusion model of neuron.Influence of noise on the function of a "physiological" neural network.Evidence, information, and surprise.Input-output relationship of the Leaky-integrator neuron model.The relationship between a neuronal cross-correlogram and the underlying postsynaptic current.Noise effects on spike propagation in the stochastic Hodgkin-Huxley models.A stochastic model for the membrane potential of a stimulated neuron.Stochastic processes in neurophysiology: transformation from point to continuous processes.Non-Markov negative correlation between interspike intervals in mammalian sympathetic efferent discharges.The induction of periodic and chaotic activity in a molluscan neurone.A simulation study of a neuron in a simple muscle control system.Recurrent inhibition and afterhyperpolarization: effects on neuronal discharge.Spectral 1/fnoise derived from extremized physical information
P2860
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P2860
description
article
@en
wetenschappelijk artikel
@nl
наукова стаття, опублікована в 1976
@uk
ലേഖനം
@ml
name
Models of the Stochastic Activity of Neurones
@en
Models of the Stochastic Activity of Neurones
@en-gb
Models of the Stochastic Activity of Neurones
@nl
type
label
Models of the Stochastic Activity of Neurones
@en
Models of the Stochastic Activity of Neurones
@en-gb
Models of the Stochastic Activity of Neurones
@nl
prefLabel
Models of the Stochastic Activity of Neurones
@en
Models of the Stochastic Activity of Neurones
@en-gb
Models of the Stochastic Activity of Neurones
@nl
P1476
Models of the Stochastic Activity of Neurones
@en
P356
10.1007/978-3-642-46345-7
P577
1976-01-01T00:00:00Z