Title :
A computationally efficient method for modeling neural spiking activity with point processes nonparametrically
Author :
Coleman, Todd P. ; Sarma, Sridevi
Author_Institution :
Univ. of Illinois Urbana Champaign, Champaign
Abstract :
Point process models have been shown to be useful in characterizing neural spiking activity (NSA) as a function of extrinsic and intrinsic factors. Most point process models of NSA are parametric as they are often efficiently computable. However, if the actual point process does not lie in the assumed parametric class of functions, misleading inferences can arise. Nonparametric methods are attractive due to fewer assumptions, but computation grows with the size of the data. We propose a computationally efficient method for nonparametric maximum likelihood estimation when the conditional intensity function, which characterizes the point process in its entirety, is assumed to be a Lipschitz continuous function but otherwise arbitrary. We show that by exploiting much structure, the problem becomes efficiently solvable and we compare our nonparametric estimation method to the most commonly used parametric approaches on goldfish retinal ganglion neural data. In this example, our nonparametric method gives a superior absolute goodness-of-fit measure than all parametric approaches analyzed.
Keywords :
maximum likelihood estimation; neural nets; Lipschitz continuous function; neural spiking activity; nonparametric maximum likelihood estimation; nonparametric methods; point process models; History; Maximum likelihood estimation; Neurons; Neuroscience; Parametric statistics; Rabbits; Rats; Retina; Sea measurements; USA Councils;
Conference_Titel :
Decision and Control, 2007 46th IEEE Conference on
Conference_Location :
New Orleans, LA
Print_ISBN :
978-1-4244-1497-0
Electronic_ISBN :
0191-2216
DOI :
10.1109/CDC.2007.4434240