Solving Interpretable Kernel Dimension Reduction
–Neural Information Processing Systems
Kernel dimensionality reduction (KDR) algorithms find a low dimensional representation of the original data by optimizing kernel dependency measures that are capable of capturing nonlinear relationships. The standard strategy is to first map the data into a high dimensional feature space using kernels prior to a projection onto a low dimensional space.
Neural Information Processing Systems
Nov-16-2025, 19:25:31 GMT
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