Kernel Pre-Training in Feature Space via m-Kernels

Shilton, Alistair, Gupta, Sunil, Rana, Santu, Vellanki, Pratibha, Li, Cheng, Venkatesh, Svetha, Park, Laurence, Sutti, Alessandra, Rubin, David, Dorin, Thomas, Vahid, Alireza, Height, Murray, Slezak, Teo

arXiv.org Machine Learning 

This paper presents a novel approach to kernel tuning. The method presented borrows techniques from reproducing kernel Banach space (RKBS) theory and tensor kernels and leverages them to convert (re-weight in feature space) existing kernel functions into new, problem-specific kernels using auxiliary data. The proposed method is applied to accelerating Bayesian optimisation via covariance (kernel) function pre-tuning for short-polymer fibre manufacture and alloy design.

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