A Novel Multiple Kernel Learning Framework for Heterogeneous Feature Fusion and Variable Selection

Volume: 14, Issue: 3, Pages: 563 - 574
Published: Jun 1, 2012
Abstract
We propose a novel multiple kernel learning (MKL) algorithm with a group lasso regularizer, called group lasso regularized MKL (GL-MKL), for heterogeneous feature fusion and variable selection. For problems of feature fusion, assigning a group of base kernels for each feature type in an MKL framework provides a robust way in fitting data extracted from different feature domains. Adding a mixed norm constraint (i.e., group lasso) as the...
Paper Details
Title
A Novel Multiple Kernel Learning Framework for Heterogeneous Feature Fusion and Variable Selection
Published Date
Jun 1, 2012
Volume
14
Issue
3
Pages
563 - 574
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