Regularization by the linear functional strategy with multiple kernels

SV Pereverzyev, P Tkachenko - Frontiers in Applied Mathematics and …, 2017 - frontiersin.org
Frontiers in Applied Mathematics and Statistics, 2017frontiersin.org
The choice of the kernel is known to be a challenging and central problem of kernel based
supervised learning. Recent applications and significant amount of literature have shown
that using multiple kernels (the so-called Multiple Kernel Learning (MKL)) instead of a single
one can enhance the interpretability of the learned function and improve performances.
However, a comparison of existing MKL-algorithms shows that though there may not be
large differences in terms of accuracy, there is difference between MKL-algorithms in …
The choice of the kernel is known to be a challenging and central problem of kernel based supervised learning. Recent applications and significant amount of literature have shown that using multiple kernels (the so-called Multiple Kernel Learning (MKL)) instead of a single one can enhance the interpretability of the learned function and improve performances. However, a comparison of existing MKL-algorithms shows that though there may not be large differences in terms of accuracy, there is difference between MKL-algorithms in complexity as given by the training time, for example. In this paper we present a promising approach for training the MKL-machine by the linear functional strategy, which is either faster or more accurate than previously known ones.
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