Atlas-based Manifold Representations for Interpretable Riemannian Machine Learning
Abstract
Despite the popularity of the manifold hypothesis, current manifold-learning methods do not support machine learning directly on the latent d-dimensional data manifold, as they primarily aim to perform dimensionality reduction into RD, losing key manifold features when the embedding dimension D approaches d. On the other hand, methods that directly learn the latent manifold as a differentiable atlas have been relatively underexplored. In this paper, we aim to give a proof of concept of the effectiveness and potential of atlas-based methods. To this end, we implement a generic data structure to maintain a differentiable atlas that enables Riemannian optimization over the manifold. We complement this with an unsupervised heuristic that learns a differentiable atlas from point cloud data. We experimentally demonstrate that this approach has advantages in terms of efficiency and accuracy in selected settings. Moreover, in a supervised classification task over the Klein bottle and in RNA velocity analysis of hematopoietic data, we showcase the improved interpretability and robustness of our approach.
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