Teacher
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PASCUCCI FEDERICA
(syllabus)
Dynamical models of stationary processes and prediction - Physical laws in engineering and science - Stochastic processes - Models for filtering, prediction and control: Input-output models for time series and dynamical systems (AR, ARMA, ARX, ARMAX)
Identification - Black-box identification (Least Squares and Maximum likelihood methods) - Model complexity selection - Cross-validation, FPE (Final Prediction Error), AIC (Akaike Information Criterion) or MDL (Minimum Description Length) techniques - Recursive identification methods (RLS,ELS,RML). Adaptation via forgetting factor techniques
Bayesian filtering - The state estimation problem. Filtering, prediction and smoothing. - Kalman filter, steady-state filter Extended Kalman filter - Unscented transformation, Unscented Kalman filter - Grid-based filtering - Particle filtering
Distributed filtering - Information filter - Extended Information filter
(reference books)
Sergio Bittanti, "Model Identification and Data Analysis", John Wiley and Sons Ltd
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