Course Features
Course Highlights
Course Description
This course is offered to graduates and includes topics such as
mathematical models of systems from observations of their behavior;
time series, state-space, and input-output models; model structures,
parametrization, and identifiability; non-parametric methods;
prediction error methods for parameter estimation, convergence,
consistency, and asymptotic distribution; relations to maximum
likelihood estimation; recursive estimation; relation to Kalman
filters; structure determination; order estimation; Akaike criterion;
bounded but unknown noise model; and robustness and practical issues.