Leaky Integrate and Fire models coupled through copulas: association properties of the Interspike Intervals.
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Leaky Integrate and Fire models coupled through copulas: association properties of the Interspike Intervals. / Sacerdote, Laura; Tamborrino, Massimiliano.
In: Chinese Journal of Physiology, Vol. 53, No. 6, 2010, p. 396-406.Research output: Contribution to journal › Journal article › Research › peer-review
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TY - JOUR
T1 - Leaky Integrate and Fire models coupled through copulas: association properties of the Interspike Intervals.
AU - Sacerdote, Laura
AU - Tamborrino, Massimiliano
PY - 2010
Y1 - 2010
N2 - We propose a model able to describe the Interspike Intervals of two or more neurons subject to common inputs from the network. The single neuron dynamic is described through a classical Leaky Integrate and Fire model, but the model also catches the joint behavior of two neurons resorting to the use of copulas. Copulas are mathematical objects largely used to describe dependencies laws. Syn- chronous and delayed dependencies are considered by means of a set of examples. Results are discussed making use of crosscorrelograms.
AB - We propose a model able to describe the Interspike Intervals of two or more neurons subject to common inputs from the network. The single neuron dynamic is described through a classical Leaky Integrate and Fire model, but the model also catches the joint behavior of two neurons resorting to the use of copulas. Copulas are mathematical objects largely used to describe dependencies laws. Syn- chronous and delayed dependencies are considered by means of a set of examples. Results are discussed making use of crosscorrelograms.
KW - Faculty of Science
KW - Leaky integrate and fire models
KW - copulas
KW - interspike interval dependency
M3 - Journal article
VL - 53
SP - 396
EP - 406
JO - Chinese Journal of Physiology
JF - Chinese Journal of Physiology
SN - 0304-4920
IS - 6
ER -
ID: 22238310