Deep Kernel Learning

Pages: 370 - 378
Published: May 2, 2016
Abstract
We introduce scalable deep kernels, which combine the structural properties of deep learning architectures with the non-parametric flexibility of kernel methods. Specifically, we transform the inputs of a spectral mixture base kernel with a deep architecture, using local kernel interpolation, inducing points, and structure exploiting (Kronecker and Toeplitz) algebra for a scalable kernel representation. These closed-form kernels can be used as...
Paper Details
Title
Deep Kernel Learning
Published Date
May 2, 2016
Pages
370 - 378
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