Maximum likelihood identification of neural point process systems |
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Authors: | E. S. Chornoboy L. P. Schramm A. F. Karr |
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Affiliation: | (1) Department of Biomedical Engineering, The Johns Hopkins School of Medicine, 21205 Baltimore, MD, USA;(2) Department of Mathematical Sciences, G.W.C. Whiting School of Engineering, The Johns Hopkins University, 21218 Baltimore, MD, USA;(3) Present address: Lincoln Laboratory, Massachusetts Institute of Technology, Room HW-2, 02173-0073 Lexington, MA, USA |
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Abstract: | Using the theory of random point processes, a method is presented whereby functional relationships between neurons can be detected and modeled. The method is based on a point process characterization involving stochastic intensities and an additive rate function model. Estimates are based on the maximum likelihood (ML) principle and asymptotic properties are examined in the absence of a stationarity assumption. An iterative algorithm that computes the ML estimates is presented. It is based on the expectation/maximization (EM) procedure of Dempster et al. (1977) and makes ML identification accessible to models requiring many parameters. Examples illustrating the use of the method are also presented. These examples are derived from simulations of simple neural systems that cannot be identified using correlation techniques. It is shown that the ML method correctly identifies each of these systems. |
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