Galaxies and Halos on Graph Neural Networks: Deep Generative Modeling Scalar and Vector Quantities for Intrinsic Alignment
Yesukhei Jagvaral, Fran\c{c}ois Lanusse, Sukhdeep Singh, Rachel, Mandelbaum, Siamak Ravanbakhsh, Duncan Campbell

TL;DR
This paper introduces a deep generative model using graph neural networks to simulate galaxy intrinsic alignments, capturing scalar and vector properties and their dependencies, to aid cosmological survey analyses.
Contribution
It presents a novel graph-based generative approach trained on simulations to accurately reproduce galaxy orientations and intrinsic alignments, including dependencies on mass and morphology.
Findings
Model accurately reproduces 3D orientation correlations.
Model captures 2D ellipticity correlations across scales.
Successfully models IA dependence on galaxy properties.
Abstract
In order to prepare for the upcoming wide-field cosmological surveys, large simulations of the Universe with realistic galaxy populations are required. In particular, the tendency of galaxies to naturally align towards overdensities, an effect called intrinsic alignments (IA), can be a major source of systematics in the weak lensing analysis. As the details of galaxy formation and evolution relevant to IA cannot be simulated in practice on such volumes, we propose as an alternative a Deep Generative Model. This model is trained on the IllustrisTNG-100 simulation and is capable of sampling the orientations of a population of galaxies so as to recover the correct alignments. In our approach, we model the cosmic web as a set of graphs, where the graphs are constructed for each halo, and galaxy orientations as a signal on those graphs. The generative model is implemented on a Generative…
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Taxonomy
TopicsData Visualization and Analytics
