Author/Authors :
Carl Duchesne and John F. MacGregor، نويسنده ,
DocumentNumber :
1384414
Title Of Article :
Jackknife and bootstrap methods in the identification of dynamic models
شماره ركورد :
11197
Latin Abstract :
A new criterion based on a Jackknife or a Bootstrap statistic is proposed for identifying non-parsimonious dynamic models (FIR, ARX). It is applicable for selecting the number of components in latent variable regression methods or the constraining parameter in regularized least squares regression methods. These meta parameters are used to overcome ill-conditioning caused by model over-parameterization, when fitted using prediction error or least squares methods. In all cases studied, using PLS for parameter estimation, the proposed criterion led to the selection of better models, in the mean square error sense, than when selected via cross-validation. The methodology also provides approximate confidence intervals for the model parameters and the step and impulse response of the system.
From Page :
553
NaturalLanguageKeyword :
Identification , FIR model , Jackknife , Bootstrap , Partial least squares , ridge regression , Confidence intervals
JournalTitle :
Studia Iranica
To Page :
564
To Page :
564
Link To Document :
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