Learning Nonlinear Dynamical Systems Using an EM Algorithm
Ghahramani, Zoubin, Roweis, Sam T.
–Neural Information Processing Systems
The Expectation-Maximization (EM) algorithm is an iterative procedure formaximum likelihood parameter estimation from data sets with missing or hidden variables [2]. It has been applied to system identification in linear stochastic state-space models, where the state variables are hidden from the observer and both the state and the parameters of the model have to be estimated simultaneously [9].We present a generalization of the EM algorithm for parameter estimation in nonlinear dynamical systems. The "expectation" stepmakes use of Extended Kalman Smoothing to estimate the state, while the "maximization" step re-estimates the parameters usingthese uncertain state estimates. In general, the nonlinear maximization step is difficult because it requires integrating out the uncertainty in the states. However, if Gaussian radial basis function (RBF)approximators are used to model the nonlinearities, the integrals become tractable and the maximization step can be solved via systems of linear equations.
Neural Information Processing Systems
Dec-31-1999