Multiple Operator valued Kernel Learning
–Neural Information Processing Systems
Positive definite operator-valued kernels generalize the well-known notion of reproducing kernels, and are naturally adapted to multi-output learning situations. This paper addresses the problem of learning a finite linear combination of infinite-dimensional operator-valued kernels which are suitable for extending functional data analysis methods to nonlinear contexts.
Neural Information Processing Systems
Mar-14-2024, 06:11:21 GMT
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