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Random Fourier Features for Operator-Valued Kernels (1605.02536v3)

Published 9 May 2016 in cs.LG and stat.ML

Abstract: Devoted to multi-task learning and structured output learning, operator-valued kernels provide a flexible tool to build vector-valued functions in the context of Reproducing Kernel Hilbert Spaces. To scale up these methods, we extend the celebrated Random Fourier Feature methodology to get an approximation of operator-valued kernels. We propose a general principle for Operator-valued Random Fourier Feature construction relying on a generalization of Bochner's theorem for translation-invariant operator-valued Mercer kernels. We prove the uniform convergence of the kernel approximation for bounded and unbounded operator random Fourier features using appropriate Bernstein matrix concentration inequality. An experimental proof-of-concept shows the quality of the approximation and the efficiency of the corresponding linear models on example datasets.

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Authors (3)
  1. Romain Brault (3 papers)
  2. Florence d'Alché-Buc (34 papers)
  3. Markus Heinonen (55 papers)
Citations (42)

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