A very efficient learning algorithm for model subset selection is introduced based on a new composite cost function that simultaneously optimizes the model approximation ability and model adequacy. The derived model parameters are estimated via forward orthogonal least squares, but the subset selection cost function includes an A-optimality design criterion to minimize the variance of the parameter estimates that ensures the adequacy and parsimony of the final model. An illustrative example is included to demonstrate the effectiveness of the new approach
Due to the simple structure and global approximation ability, single hidden layer neural networks ha...
Nonlinear models are common in pharmacokinetics and pharmacodynamics. To date, most work in design i...
In this brief, we propose an orthogonal forward regression (OFR) algorithm based on the principles o...
A very efficient learning algorithm for model subset selection is introduced based on a new composit...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
Model structure selection plays a key role in non-linear system identification. The first step in no...
A new adaptive orthogonal search (AOS) algorithm is proposed for model subset selection and non-line...
An efficient model identification algorithm for a large class of linear-in-the-parameters models is ...
The note proposes an efficient nonlinear identification algorithm by combining a locally regularized...
A new forward regression model identification algorithm is introduced. The derived model parameters,...
In this correspondence new robust nonlinear model construction algorithms for a large class of linea...
Model structure selection plays a key role in nonlinear system identification. The first step in non...
Abstract—In this correspondence new robust nonlinear model con-struction algorithms for a large clas...
The orthogonal least squares (OLS) algorithm [l] is an efficient implementation of the forward-selec...
This correspondence introduces a new orthogonal forward regression (OFR) model identification algori...
Due to the simple structure and global approximation ability, single hidden layer neural networks ha...
Nonlinear models are common in pharmacokinetics and pharmacodynamics. To date, most work in design i...
In this brief, we propose an orthogonal forward regression (OFR) algorithm based on the principles o...
A very efficient learning algorithm for model subset selection is introduced based on a new composit...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
Model structure selection plays a key role in non-linear system identification. The first step in no...
A new adaptive orthogonal search (AOS) algorithm is proposed for model subset selection and non-line...
An efficient model identification algorithm for a large class of linear-in-the-parameters models is ...
The note proposes an efficient nonlinear identification algorithm by combining a locally regularized...
A new forward regression model identification algorithm is introduced. The derived model parameters,...
In this correspondence new robust nonlinear model construction algorithms for a large class of linea...
Model structure selection plays a key role in nonlinear system identification. The first step in non...
Abstract—In this correspondence new robust nonlinear model con-struction algorithms for a large clas...
The orthogonal least squares (OLS) algorithm [l] is an efficient implementation of the forward-selec...
This correspondence introduces a new orthogonal forward regression (OFR) model identification algori...
Due to the simple structure and global approximation ability, single hidden layer neural networks ha...
Nonlinear models are common in pharmacokinetics and pharmacodynamics. To date, most work in design i...
In this brief, we propose an orthogonal forward regression (OFR) algorithm based on the principles o...