Random Forest Autoencoders for Guided Representation Learning
–Neural Information Processing Systems
Extensive research has produced robust methods for unsupervised data visualization. Yet supervised visualization--where expert labels guide representations--remains underexplored, as most supervised approaches prioritize classification over visualization. Recently, RF-PHATE, a diffusion-based manifold learning method leveraging random forests and information geometry, marked significant progress in supervised visualization.
Neural Information Processing Systems
Jun-19-2026, 12:06:16 GMT
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