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Disentangled Representation Learning through Unsupervised Symmetry Group Discovery

arXiv cs.LG / 3/13/2026

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Key Points

  • The paper proposes an unsupervised method for an embodied agent to autonomously discover the symmetry group structure of its action space through interaction with the environment.
  • It eliminates the need for prior knowledge about the symmetry group or subgroup properties, addressing key limitations of prior symmetry-based disentanglement methods.
  • The authors prove identifiability of the true symmetry group decomposition under minimal assumptions.
  • They derive two algorithms: one to discover the group decomposition from interaction data and another to learn Linear Symmetry-Based Disentangled (LSBD) representations without assuming specific subgroup properties.
  • The method is validated on three environments with different group decompositions, where it outperforms existing LSBD approaches.

Abstract

Symmetry-based disentangled representation learning leverages the group structure of environment transformations to uncover the latent factors of variation. Prior approaches to symmetry-based disentanglement have required strong prior knowledge of the symmetry group's structure, or restrictive assumptions about the subgroup properties. In this work, we remove these constraints by proposing a method whereby an embodied agent autonomously discovers the group structure of its action space through unsupervised interaction with the environment. We prove the identifiability of the true symmetry group decomposition under minimal assumptions, and derive two algorithms: one for discovering the group decomposition from interaction data, and another for learning Linear Symmetry-Based Disentangled (LSBD) representations without assuming specific subgroup properties. Our method is validated on three environments exhibiting different group decompositions, where it outperforms existing LSBD approaches.