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Jackson BS (2004) Including long-range dependence in integrate-and-fire models of the high interspike-interval variability of cortical neurons. Neural Comput 16:2125-95 [PubMed]

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   Auditory nerve spontaneous rate histograms (Jackson and Carney 2005) [Model]

Richard A, Orio P, Tanré E (2018) An integrate-and-fire model to generate spike trains with long-range dependence Journal of Computational Neuroscience [Journal]

   Perfect Integrate and fire with noisy adaptation or fractional noise (Richard et al 2018) [Model]

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