Diffusion Maps for Group-Invariant Manifolds

In this article, we consider the manifold learning problem when the data set is invariant under the action of a compact Lie group . Our approach consists in augmenting the data-induced graph Laplacian by integrating over orbits under the action of of the existing data points. We prove that this -invariant Laplacian operator can be diagonalized by using the unitary irreducible representation matrices of , and we provide an explicit formula for computing the eigenvalues and eigenvectors of . Moreover, we show that the normalized Laplacian operator converges to the Laplace-Beltrami operator of the data manifold with an improved convergence rate, where the improvement grows with the dimension of the symmetry group . This work extends the steerable graph Laplacian framework of Landa and Shkolnisky from the case of to arbitrary compact Lie groups.
View on arXiv