Gradient-based adaptation of general gaussian kernels

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Gradient-based optimizing of gaussian kernel functions is considered. The gradient for the adaptation of scaling and rotation of the input space is computed to achieve invariance against linear transformations. This is done by using the exponential map as a parameterization of the kernel parameter manifold. By restricting the optimization to a constant trace subspace, the kernel size can be controlled. This is, for example, useful to prevent overfitting when minimizing radius-margin generalization performance measures. The concepts are demonstrated by training hard margin support vector machines on toy data.
Original languageEnglish
JournalNeural Computation
Volume17
Issue number10
Pages (from-to)2099-2105
Number of pages7
ISSN0899-7667
DOIs
Publication statusPublished - 2005
Externally publishedYes

ID: 32645794