The G-invariant graph Laplacian part II: Diffusion maps

Eitan Rosen*, Xiuyuan Cheng, Yoel Shkolnisky

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

The diffusion maps embedding of data lying on a manifold has shown success in tasks such as dimensionality reduction, clustering, and data visualization. In this work, we consider embedding data sets that were sampled from a manifold which is closed under the action of a continuous matrix group. An example of such a data set is images whose planar rotations are arbitrary. The G-invariant graph Laplacian, introduced in Part I of this work, admits eigenfunctions in the form of tensor products between the elements of the irreducible unitary representations of the group and eigenvectors of certain matrices. We employ these eigenfunctions to derive diffusion maps that intrinsically account for the group action on the data. In particular, we construct both equivariant and invariant embeddings, which can be used to cluster and align the data points. We demonstrate the utility of our construction in the problem of random computerized tomography.

Original languageEnglish
Article number101695
JournalApplied and Computational Harmonic Analysis
Volume73
DOIs
StatePublished - Nov 2024

Funding

FundersFunder number
National Institutes of Health
European Research Council
National Science FoundationDMS-2007040
NSF-BSF2019733
Horizon 2020723991 - CRYOMATH
National Institute of General Medical SciencesR01GM136780-01

    Keywords

    • Diffusion maps
    • Graph Laplacian
    • Group invariant embeddings
    • Manifold learning

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