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Diffusion Maps for Group-Invariant Manifolds

Abstract

In this article, we consider the manifold learning problem when the data set is invariant under the action of a compact Lie group KK. Our approach consists in augmenting the data-induced graph Laplacian by integrating over orbits under the action of KK of the existing data points. We prove that this KK-invariant Laplacian operator LL can be diagonalized by using the unitary irreducible representation matrices of KK, and we provide an explicit formula for computing the eigenvalues and eigenvectors of LL. Moreover, we show that the normalized Laplacian operator LNL_N 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 KK. This work extends the steerable graph Laplacian framework of Landa and Shkolnisky from the case of SO(2)\operatorname{SO}(2) to arbitrary compact Lie groups.

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