Is Input Sparsity Time Possible for Kernel Low-Rank Approximation?
–Neural Information Processing Systems
Low-rank approximation is a common tool used to accelerate kernel methods: the n n kernel matrix K is approximated via a rank-k matrix K which can be stored in much less space and processed more quickly. In this work we study the limits of computationally efficient low-rank kernel approximation.
Neural Information Processing Systems
Nov-21-2025, 10:23:40 GMT
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