The G-invariant graph Laplacian Part I: Convergence rate and eigendecomposition

Eitan Rosen, Paulina Hoyos, Xiuyuan Cheng, Joe Kileel, Yoel Shkolnisky

Research output: Contribution to journalArticlepeer-review

Abstract

Graph Laplacian based algorithms for data lying on a manifold have been proven effective for tasks such as dimensionality reduction, clustering, and denoising. In this work, we consider data sets whose data points lie on a manifold that is closed under the action of a known unitary matrix Lie group G. We propose to construct the graph Laplacian by incorporating the distances between all the pairs of points generated by the action of G on the data set. We deem the latter construction the “G-invariant Graph Laplacian” (G-GL). We show that the G-GL converges to the Laplace-Beltrami operator on the data manifold, while enjoying a significantly improved convergence rate compared to the standard graph Laplacian which only utilizes the distances between the points in the given data set. Furthermore, we show that the G-GL admits a set of eigenfunctions that have the form of certain products between the group elements and eigenvectors of certain matrices, which can be estimated from the data efficiently using FFT-type algorithms. We demonstrate our construction and its advantages on the problem of filtering data on a noisy manifold closed under the action of the special unitary group SU(2).

Original languageEnglish
Article number101637
JournalApplied and Computational Harmonic Analysis
Volume71
DOIs
StatePublished - Jul 2024

Keywords

  • Graph Laplacian
  • Group invariance
  • Manifold denoising
  • Manifold learning

All Science Journal Classification (ASJC) codes

  • Applied Mathematics

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