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Poster
in
Workshop: Symmetry and Geometry in Neural Representations

A Cosmic-Scale Benchmark for Symmetry-Preserving Data Processing

Julia Balla · Siddharth Mishra-Sharma · Carolina Cuesta · Tommi Jaakkola · Tess Smidt

Keywords: [ Point Cloud ] [ Graph Neural Networks ] [ Cosmology ] [ Equivariance ]


Abstract: Efficiently processing structured point cloud data while preserving multiscale information is a key challenge across domains, from graphics to atomistic modeling. Using a curated dataset of simulated galaxy positions and properties, represented as point clouds, we benchmark the ability of graph neural networks to simultaneously capture local clustering environments and long-range correlations. Given the homogeneous and isotropic nature of the Universe, the data exhibits a high degree of symmetry. We therefore focus on evaluating the performance of Euclidean symmetry-preserving ($E(3)$-equivariant) graph neural networks, showing that they can outperform non-equivariant counterparts and domain-specific information extraction techniques in downstream performance as well as simulation-efficiency.

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