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
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.
May-20-2018
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- Oceania > Australia (0.28)
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