Isometric Quotient Variational Auto-Encoders for Structure-Preserving Representation Learning

Published: 21 Sept 2023, Last Modified: 26 Dec 2023NeurIPS 2023 posterEveryoneRevisionsBibTeX
Keywords: representation learning, auto-encoders, geometry, symmetry
TL;DR: We propose a simple yet effective auto-encoding framework that can learn the underlying symmetry and geometry in data manifolds simultaneously.
Abstract: We study structure-preserving low-dimensional representation of a data manifold embedded in a high-dimensional observation space based on variational auto-encoders (VAEs). We approach this by decomposing the data manifold $\mathcal{M}$ as $\mathcal{M} = \mathcal{M} / G \times G$, where $G$ and $\mathcal{M} / G$ are a group of symmetry transformations and a quotient space of $\mathcal{M}$ up to $G$, respectively. From this perspective, we define the structure-preserving representation of such a manifold as a latent space $\mathcal{Z}$ which is isometrically isomorphic (i.e., distance-preserving) to the quotient space $\mathcal{M} / G$ rather $\mathcal{M}$ (i.e., symmetry-preserving). To this end, we propose a novel auto-encoding framework, named isometric quotient VAEs (IQVAEs), that can extract the quotient space from observations and learn the Riemannian isometry of the extracted quotient in an unsupervised manner. Empirical proof-of-concept experiments reveal that the proposed method can find a meaningful representation of the learned data and outperform other competitors for downstream tasks.
Supplementary Material: pdf
Submission Number: 9086
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