Inference for nonlinear dynamical systems
Top Cited Papers
- 5 December 2006
- journal article
- Published by Proceedings of the National Academy of Sciences in Proceedings of the National Academy of Sciences
- Vol. 103 (49), 18438-18443
- https://doi.org/10.1073/pnas.0603181103
Abstract
Nonlinear stochastic dynamical systems are widely used to model systems across the sciences and engineering. Such models are natural to formulate and can be analyzed mathematically and numerically. However, difficulties associated with inference from time-series data about unknown parameters in these models have been a constraint on their application. We present a new method that makes maximum likelihood estimation feasible for partially-observed nonlinear stochastic dynamical systems (also known as state-space models) where this was not previously the case. The method is based on a sequence of filtering operations which are shown to converge to a maximum likelihood parameter estimate. We make use of recent advances in nonlinear filtering in the implementation of the algorithm. We apply the method to the study of cholera in Bangladesh. We construct confidence intervals, perform residual analysis, and apply other diagnostics. Our analysis, based upon a model capturing the intrinsic nonlinear dynamics of the system, reveals some effects overlooked by previous studies.Keywords
This publication has 35 references indexed in Scilit:
- A UNIFIED FRAMEWORK FOR MODELLING WILDLIFE POPULATION DYNAMICS†Australian & New Zealand Journal of Statistics, 2005
- POPULATION TIME SERIES: PROCESS VARIABILITY, OBSERVATION ERRORS, MISSING VALUES, LAGS, AND HIDDEN STATESEcology, 2004
- A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian trackingIEEE Transactions on Signal Processing, 2002
- FITTING POPULATION DYNAMIC MODELS TO TIME-SERIES DATA BY GRADIENT MATCHINGEcology, 2002
- Noisy Clockwork: Time Series Analysis of Population Fluctuations in AnimalsScience, 2001
- Time Series Modelling of Childhood Diseases: A Dynamical Systems ApproachJournal of the Royal Statistical Society Series C: Applied Statistics, 2000
- Asymptotic normality of the maximum likelihood estimator in state space modelsThe Annals of Statistics, 1999
- Likelihood analysis of non-Gaussian measurement time seriesBiometrika, 1997
- Efficient Sequential Designs with Binary DataJournal of the American Statistical Association, 1985
- A contribution to the mathematical theory of epidemicsProceedings of the Royal Society of London. Series A, Containing Papers of a Mathematical and Physical Character, 1927