An Algorithm for Optimally Fitting a Wiener Model

The purpose of this work is to present a new methodology for fitting Wiener networks to datasets with a large number of variables. Wiener networks have the ability to model a wide range of data types, and their structures can yield parameters with phenomenological meaning. There are several challeng...

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Veröffentlicht in:Mathematical Problems in Engineering 2011-01, Vol.2011 (2011), p.834-848-152
Hauptverfasser: Beverlin, Lucas P., Rollins, Derrick K., Vyas, Nisarg, Andre, David
Format: Artikel
Sprache:eng
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Zusammenfassung:The purpose of this work is to present a new methodology for fitting Wiener networks to datasets with a large number of variables. Wiener networks have the ability to model a wide range of data types, and their structures can yield parameters with phenomenological meaning. There are several challenges to fitting such a model: model stiffness, the nonlinear nature of a Wiener network, possible overfitting, and the large number of parameters inherent with large input sets. This work describes a methodology to overcome these challenges by using several iterative algorithms under supervised learning and fitting subsets of the parameters at a time. This methodology is applied to Wiener networks that are used to predict blood glucose concentrations. The predictions of validation sets from models fit to four subjects using this methodology yielded a higher correlation between observed and predicted observations than other algorithms, including the Gauss-Newton and Levenberg-Marquardt algorithms.
ISSN:1024-123X
1563-5147
DOI:10.1155/2011/570509