FALKON: An Optimal Large Scale Kernel Method
Rudi, Alessandro, Carratino, Luigi, Rosasco, Lorenzo
–Neural Information Processing Systems
Kernel methods provide a principled way to perform non linear, nonparametric learning. They rely on solid functional analytic foundations and enjoy optimal statistical properties. However, at least in their basic form, they have limited applicability in large scale scenarios because of stringent computational requirements in terms of time and especially memory. In this paper, we take a substantial step in scaling up kernel methods, proposing FALKON, a novel algorithm that allows to efficiently process millions of points. FALKON is derived combining several algorithmic principles, namely stochastic subsampling, iterative solvers and preconditioning.
Neural Information Processing Systems
Feb-14-2020, 14:11:16 GMT
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