Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
about
Biophysical information representation in temporally correlated spike trains.A Statistical Model for In Vivo Neuronal Dynamics.Intrinsic periodic and aperiodic stochastic resonance in an electrochemical cell.Information filtering by synchronous spikes in a neural population.Effect of inhibitory feedback on correlated firing of spiking neural networkThe response of cortical neurons to in vivo-like input current: theory and experiment : I. Noisy inputs with stationary statistics.Inhibition of rhythmic spiking by colored noise in neural systems.Exact firing time statistics of neurons driven by discrete inhibitory noise.Synchronous spikes are necessary but not sufficient for a synchrony code in populations of spiking neurons.Multimodal transition and stochastic antiresonance in squid giant axons.Self-consistent determination of the spike-train power spectrum in a neural network with sparse connectivity.Coding of temporally varying signals in networks of spiking neurons with global delayed feedback.Stochastic synchronization in finite size spiking networks.Finite-size dynamics of inhibitory and excitatory interacting spiking neurons.Colored noise and memory effects on formal spiking neuron models.First-passage times in integrate-and-fire neurons with stochastic thresholds.Coding of time-dependent stimuli in homogeneous and heterogeneous neural populations.Exact results for power spectrum and susceptibility of a leaky integrate-and-fire neuron with two-state noise.Partial synchronous output of a neuronal population under weak common noise: Analytical approaches to the correlation statistics.Information filtering in resonant neurons.Comparative study of different integrate-and-fire neurons: spontaneous activity, dynamical response, and stimulus-induced correlation.Firing rate of noisy integrate-and-fire neurons with synaptic current dynamics.Firing-rate response of linear and nonlinear integrate-and-fire neurons to modulated current-based and conductance-based synaptic drive.Theory of oscillatory firing induced by spatially correlated noise and delayed inhibitory feedback.Analytic expressions for rate and CV of a type I neuron driven by white gaussian noise.An alternate protocol to achieve stochastic and deterministic resonances.Stochastic and coherence resonance in feed-forward-loop neuronal network motifs.Weak electric fields detectability in a noisy neural network.Coherence resonance in bursting neural networks.Dissipative stochastic mechanics for capturing neuronal dynamics under the influence of ion channel noise: formalism using a special membrane.Sub- and suprathreshold adaptation currents have opposite effects on frequency tuning.Estimating input parameters from intracellular recordings in the Feller neuronal model.Rate-synchrony relationship between input and output of spike trains in neuronal networks.Oscillation regularity in noise-driven excitable systems with multi-time-scale adaptation.Self-Consistent Scheme for Spike-Train Power Spectra in Heterogeneous Sparse Networks.Phase Diffusion in Unequally Noisy Coupled Oscillators.Spectra and waiting-time densities in firing resonant and nonresonant neurons.Presynaptic Spontaneous Activity Enhances the Accuracy of Latency Coding.Transmission of temporally correlated spike trains through synapses with short-term depression
P2860
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P2860
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
description
2002 nî lūn-bûn
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2002年の論文
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2002年学术文章
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2002年学术文章
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2002年学术文章
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name
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@en
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@nl
type
label
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@en
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@nl
prefLabel
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@en
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@nl
P2093
P2860
P1433
P1476
Maximizing spike train coherence or incoherence in the leaky integrate-and-fire model.
@en
P2093
André Longtin
Benjamin Lindner
Lutz Schimansky-Geier
P2860
P304
P356
10.1103/PHYSREVE.66.031916
P407
P433
P577
2002-09-30T00:00:00Z