Title of article
General methodology for nonlinear modeling of neural systems with Poisson point-process inputs
Author/Authors
Vasilis Z. Marmarelis، نويسنده , , V.Z. and Berger، نويسنده , , T.W.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
13
From page
1
To page
13
Abstract
This paper presents a general methodological framework for the practical modeling of neural systems with point-process inputs (sequences of action potentials or, more broadly, identical events) based on the Volterra and Wiener theories of functional expansions and system identification. The paper clarifies the distinctions between Volterra and Wiener kernels obtained from Poisson point-process inputs. It shows that only the Wiener kernels can be estimated via cross-correlation, but must be defined as zero along the diagonals. The Volterra kernels can be estimated far more accurately (and from shorter data-records) by use of the Laguerre expansion technique adapted to point-process inputs, and they are independent of the mean rate of stimulation (unlike their P–W counterparts that depend on it). The Volterra kernels can also be estimated for broadband point-process inputs that are not Poisson. Useful applications of this modeling approach include cases where we seek to determine (model) the transfer characteristics between one neuronal axon (a point-process ‘input’) and another axon (a point-process ‘output’) or some other measure of neuronal activity (a continuous ‘output’, such as population activity) with which a causal link exists.
Keywords
Point-process inputs , Volterra kernels , Wiener kernels , Poisson inputs , neuronal modeling , Nonlinear Modeling , Neural systems
Journal title
Mathematical Biosciences
Serial Year
2005
Journal title
Mathematical Biosciences
Record number
1588869
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