Study of the Effective Number of Parameters in Nonlinear Identification Benchmarks

Onderzoeksoutput: Conference paper

14 Citaten (Scopus)

Samenvatting

This paper discusses the importance of the notion of effective number of parameters as a measure of model complexity. Exploiting this concept allows a fair comparison of models obtained from different model classes. Several illustrative examples of linear and nonlinear models are presented to provide more insight in the problem. As one possible way of showing that model complexity can be reduced without having to pull any parameters to zero, an approach for rank reduced estimation based on the truncated SVD is also discussed. These ideas are then applied to two nonlinear real world problems: the Wiener-Hammerstein and the Silverbox benchmarks.
Originele taal-2English
Titel52nd IEEE Conference on Decision and Control, Florence, Italy, December 10-13, 2013
Pagina's4308-4313
Aantal pagina's6
StatusPublished - 10 dec. 2013
EvenementUnknown - Firenze, Italy
Duur: 10 dec. 201313 dec. 2013

Conference

ConferenceUnknown
Land/RegioItaly
StadFirenze
Periode10/12/1313/12/13

Vingerafdruk

Duik in de onderzoeksthema's van 'Study of the Effective Number of Parameters in Nonlinear Identification Benchmarks'. Samen vormen ze een unieke vingerafdruk.

Citeer dit