Estimating nonstationary inputs from a single spike train based on a neuron model with adaptation (original) (raw)

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Signal Processing for Neural Spike Trains

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Neuronal Spike Train Analysis in Likelihood Space

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Improved Spike-Sorting By Modeling Firing Statistics and Burst-Dependent Spike Amplitude Attenuation: A Markov Chain Monte Carlo Approach

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Reconstruction of Underlying Nonlinear Deterministic Dynamics Embedded in Noisy Spike Trains

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Generalized Leaky Integrate-And-Fire Models Classify Multiple Neuron Types

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