Title :
A three-state biological point process model and its parameter estimation
Author :
Zhou, G. Tong ; Schafer, William R. ; Schafer, Ronald W.
Author_Institution :
Sch. of Electr. & Comput. Eng., Georgia Inst. of Technol., Atlanta, GA, USA
fDate :
10/1/1998 12:00:00 AM
Abstract :
The Poisson random process is widely used to describe experiments involving discrete arrival data. However, for creating models of egg-laying behavior in neural biology studies on the nematode C. elegans, we have found that homogeneous Poisson processes are inadequate to capture the measured temporal patterns. We present here a novel three-state model that effectively represents the measured temporal patterns and that correlates well with the cellular and molecular mechanisms that are known to be responsible for the measured behavior. Although the model involves a combination of two Poisson processes, it is surprisingly tractable. We derive closed-form expressions for the probabilistic and statistical properties of the model and present a maximum likelihood method to estimate its parameters. Both simulated and experimental results are illustrated. The experiments with measured data show that the egg-laying patterns fit the three-state model very well. The model also may be applicable in quantifying the link between other neural processes and behaviors or in other situations where discrete events occur in clusters
Keywords :
Poisson distribution; biology computing; maximum likelihood estimation; neurophysiology; pattern recognition; signal representation; stochastic processes; zoology; Poisson process; cellular mechanisms; closed-form expressions; egg-laying behavior; maximum likelihood method; molecular mechanisms; nematode C. elegans; neural biology studies; parameter estimation; probabilistic properties; statistical properties; temporal patterns; three-state biological point process model; Animals; Biological system modeling; Data mining; Mathematical model; Maximum likelihood estimation; Muscles; Nervous system; Neurons; Parameter estimation; Random processes;
Journal_Title :
Signal Processing, IEEE Transactions on