An Informational Parsimony Perspective on Symmetry-Based Structure Extraction

Charvin, Hippolyte, Volpi, Nicola Catenacci and Polani, Daniel (2024) An Informational Parsimony Perspective on Symmetry-Based Structure Extraction. In: NeurIPS 2024 Workshop on Symmetry and Geometry in Neural Representations, 2024-12-14 - 2024-12-14.
Copy

Extraction of structure, in particular of group symmetries, is increasingly crucial to understanding and building intelligent models. In particular, some information-theoretic models of parsimonious learning have been argued to induce invariance extraction. Here, we formalise these arguments from a group-theoretic perspective. We then extend them to the study of more general probabilistic symmetries, through compressions preserving well-studied geometric measures of complexity. More precisely, we formalise a trade-off between compression and preservation of the divergence from a given hierarchical model, yielding a novel generalisation of the Information Bottleneck framework. Through appropriate choices of hierarchical models, we fully characterise (in the discrete and full support case) channel invariance, channel equivariance and distribution invariance under permutation. Allowing imperfect divergence preservation then leads to principled definitions of "soft symmetries", where the "coarseness" corresponds to the degree of compression of the system. In simple synthetic experiments, we demonstrate that our method successively recovers, at increasingly compressed "resolutions", nested but increasingly perturbed equivariances, where new equivariances emerge at bifurcation points of the trade-off parameter. Our framework suggests a new path for the extraction of generalised probabilistic symmetries.

picture_as_pdf

picture_as_pdf
57_An_Information_Parsimony_Pe.pdf
subject
Published Version
Available under Creative Commons: BY 4.0

View Download

EndNote BibTeX Reference Manager Refer Atom Dublin Core RIOXX2 XML OpenURL ContextObject in Span MODS METS Data Cite XML MPEG-21 DIDL OpenURL ContextObject HTML Citation ASCII Citation
Export

Downloads