Citation:
Shen , Z , Heinonen , M & Kaski , S 2019 , Harmonizable mixture kernels with variational Fourier features . in The 22nd International Conference on Artificial Intelligence and Statistics . Proceedings of Machine Learning Research , vol. 89 , JMLR , pp. 1812-1821 , International Conference on Artificial Intelligence and Statistics , Naha , Japan , 16/04/2019 . < http://proceedings.mlr.press/v89/shen19c/shen19c.pdf >
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Abstract:
The expressive power of Gaussian processes depends heavily on the choice of kernel. In this work we propose the novel harmonizable mixture kernel (HMK), a family of expressive, interpretable, non-stationary kernels derived from mixture models on the generalized spectral representation. As a theoretically sound treatment of non-stationary kernels, HMK supports harmonizable covariances, a wide subset of kernels including all stationary and many non-stationary covariances. We also propose variational Fourier features, an inter-domain sparse GP inference framework that offers a representative set of 'inducing frequencies'. We show that harmonizable mixture kernels interpolate between local patterns, and that variational Fourier features offers a robust kernel learning framework for the new kernel family.
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