Article ID Journal Published Year Pages File Type
410916 Neurocomputing 2006 10 Pages PDF
Abstract

Estimating the non-flat function which comprises both the steep variations and the smooth variations is a hard problem. The results achieved by the common support vector methods like SVR, LPR and LS-SVM are often unsatisfactory, because they cannot avoid underfitting and overfitting simultaneously. This paper takes this problem as a linear regression in a combined feature space which is implicitly defined by a set of translation invariant kernels with different scales, and proposes a multi-scale support vector regression (MS-SVR) method. MS-SVR performs better than SVR, LPR and LS-SVM in the experiments tried.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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