arXiv:2203.02867 [stat.ML]AbstractReferencesReviewsResources
Diffusion Maps : Using the Semigroup Property for Parameter Tuning
Published 2022-03-06Version 1
Diffusion maps (DM) constitute a classic dimension reduction technique, for data lying on or close to a (relatively) low-dimensional manifold embedded in a much larger dimensional space. The DM procedure consists in constructing a spectral parametrization for the manifold from simulated random walks or diffusion paths on the data set. However, DM is hard to tune in practice. In particular, the task to set a diffusion time t when constructing the diffusion kernel matrix is critical. We address this problem by using the semigroup property of the diffusion operator. We propose a semigroup criterion for picking t. Experiments show that this principled approach is effective and robust.
Comments: 14 pages, 12 figures
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