TY - JOUR
T1 - The G-invariant graph Laplacian part II
T2 - Diffusion maps
AU - Rosen, Eitan
AU - Cheng, Xiuyuan
AU - Shkolnisky, Yoel
N1 - Publisher Copyright:
© 2024 Elsevier Inc.
PY - 2024/11
Y1 - 2024/11
N2 - 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.
AB - 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.
KW - Diffusion maps
KW - Graph Laplacian
KW - Group invariant embeddings
KW - Manifold learning
UR - http://www.scopus.com/inward/record.url?scp=85201302758&partnerID=8YFLogxK
U2 - 10.1016/j.acha.2024.101695
DO - 10.1016/j.acha.2024.101695
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AN - SCOPUS:85201302758
SN - 1063-5203
VL - 73
JO - Applied and Computational Harmonic Analysis
JF - Applied and Computational Harmonic Analysis
M1 - 101695
ER -