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Dynamical inference of hidden biological populations
Authors:D. G. Luchinsky  V. N. Smelyanskiy  M. Millonas  P. V. E. McClintock
Affiliation:(1) NASA Ames Research Center, Mail Stop 269-2, Moffett Field, CA 94035, USA;(2) Department of Physics, Lancaster University, Lancaster, LA1 4YB, UK;(3) Mission Critical Technologies Inc., 2041 Rosecrans Ave. Suite 225, El Segundo, CA 90245, USA
Abstract:
Population fluctuations in a predator-prey system are analyzed for the case where the number of prey could be determined, subject to measurement noise, but the number of predators was unknown. The problem of how to infer the unmeasured predator dynamics, as well as the model parameters, is addressed. Two solutions are suggested. In the first of these, measurement noise and the dynamical noise in the equation for predator population are neglected; the problem is reduced to a one-dimensional case, and a Bayesian dynamical inference algorithm is employed to reconstruct the model parameters. In the second solution a full-scale Markov Chain Monte Carlo simulation is used to infer both the unknown predator trajectory, and also the model parameters, using the one-dimensional solution as an initial guess.
Keywords:PACS 02.50.Tt Inference methods  02.50.Ng Distribution theory and Monte Carlo studies  87.23.Cc Population dynamics and ecological pattern formation  02.50.-r Probability theory, stochastic processes, and statistics
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