Sparse Least Squares Support Vector Regression Machine Based on the Scale of Linear Independency[J]. Journal of Image and Graphics, 2009, 14(6): 1136. DOI: 10.11834/jig.20090620.
Sparse Least Squares Support Vector Regression Machine Based on the Scale of Linear Independency
A novel method which selects the approximate bases of high dimensional feature space based on the scale of linear independency is proposed;and after combining the presented method with the partial reduction strategy
SLS-SVRM(Sparse Least Squares Support Vector Regression Machine) is built. In addition
the recursive trick is used to accelerate the establishment of SLS-SVRM. SLS-SVRM obviously decreases the number of support vector without loss of the predicted accuracy. Finally
three UCI (university of California at irvine) datasets confirm the effectiveness of the proposed model.