| Literature DB >> 29574632 |
Alexandre Richard1, Patricio Orio2,3, Etienne Tanré4.
Abstract
Long-range dependence (LRD) has been observed in a variety of phenomena in nature, and for several years also in the spiking activity of neurons. Often, this is interpreted as originating from a non-Markovian system. Here we show that a purely Markovian integrate-and-fire (IF) model, with a noisy slow adaptation term, can generate interspike intervals (ISIs) that appear as having LRD. However a proper analysis shows that this is not the case asymptotically. For comparison, we also consider a new model of individual IF neuron with fractional (non-Markovian) noise. The correlations of its spike trains are studied and proven to have LRD, unlike classical IF models. On the other hand, to correctly measure long-range dependence, it is usually necessary to know if the data are stationary. Thus, a methodology to evaluate stationarity of the ISIs is presented and applied to the various IF models. We explain that Markovian IF models may seem to have LRD because of non-stationarities.Keywords: Interspike interval statistics; Long-range dependence; Stationarity; Stochastic integrate-and-fire model
Mesh:
Year: 2018 PMID: 29574632 DOI: 10.1007/s10827-018-0680-1
Source DB: PubMed Journal: J Comput Neurosci ISSN: 0929-5313 Impact factor: 1.621