ARTICLE IN PRESS www.elsevier.com/locate/neucom A locally regularized orthogonal least squares (LROLS) algorithm is proposed for constructing parsimonious or sparse regression models that generalize well. By associating each orthogonal weight in the regression model with an individual regularization parameter, the ability for the orthogonal least squares model selection to produce a very sparse model with good generalization performance is greatly enhanced. Furthermore, with the assistance of local regularization, when to terminate the model selection procedure becomes much clearer. A comparison with a state-of-the-art method for constructing sparse regression models, known as the relevance vector machine, is given. The proposed LROLS algor...
Ordinary least squares (OLS) is the default method for fitting linear models, but is not applicable ...
We consider a fully complex-valued radial basis function (RBF) network for regression application. T...
The objective of modelling from data is not that the model simply fits the training data well. Rathe...
A locally regularized orthogonal least squares (LROLS) algorithm is proposed for constructing parsim...
The paper proposes to combine an orthogonal least squares (OLS) model selection with local regularis...
The paper proposes a locally regularised orthogonal least squares (LROLS) algorithm for constructing...
Combining orthogonal least squares (OLS) model selection with local regularisation or smoothing lead...
The paper proposes to combine a locally regularized orthogonal least squares (LROLS) model selection...
The paper proposes to combine a locally regularized orthogonal least squares (LROLS) model selection...
The note proposes an efficient nonlinear identification algorithm by combining a locally regularized...
The paper proposes an efficient nonlinear identification algorithm by combining a locally regularize...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
Ordinary least squares (OLS) is the default method for fitting linear models, but is not applicable ...
We consider a fully complex-valued radial basis function (RBF) network for regression application. T...
The objective of modelling from data is not that the model simply fits the training data well. Rathe...
A locally regularized orthogonal least squares (LROLS) algorithm is proposed for constructing parsim...
The paper proposes to combine an orthogonal least squares (OLS) model selection with local regularis...
The paper proposes a locally regularised orthogonal least squares (LROLS) algorithm for constructing...
Combining orthogonal least squares (OLS) model selection with local regularisation or smoothing lead...
The paper proposes to combine a locally regularized orthogonal least squares (LROLS) model selection...
The paper proposes to combine a locally regularized orthogonal least squares (LROLS) model selection...
The note proposes an efficient nonlinear identification algorithm by combining a locally regularized...
The paper proposes an efficient nonlinear identification algorithm by combining a locally regularize...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
Ordinary least squares (OLS) is the default method for fitting linear models, but is not applicable ...
We consider a fully complex-valued radial basis function (RBF) network for regression application. T...
The objective of modelling from data is not that the model simply fits the training data well. Rathe...