Understanding the halo-galaxy connection is fundamental in order to improve our knowledge on the nature and properties of dark matter. In this work, we build a model that infers the mass of a halo given the positions, velocities, stellar masses, and radii of the galaxies it hosts. In order to capture information from correlations among galaxy properties and their phase space, we use Graph Neural Networks (GNNs), which are designed to work with irregular and sparse data. We train our models on galaxies from more than 2000 state-of-the-art simulations from the Cosmology and Astrophysics with MachinE Learning Simulations project. Our model, which accounts for cosmological and astrophysical uncertainties, is able to constrain the masses of the halos with a similar to 0.2 dex accuracy. Furthermore, a GNN trained on a suite of simulations is able to preserve part of its accuracy when tested on simulations run with a different code that utilizes a distinct subgrid physics model, showing the robustness of our method. The PyTorch Geometric implementation of the GNN is publicly available on GitHub (https://github.com/PabloVD/HaloGraphNet).

Pablo Villanueva-Domingo, Francisco Villaescusa-Navarro, Daniel Angl??s-Alc??zar, Shy Genel, Federico Marinacci, David N. Spergel, et al. (2022). Inferring Halo Masses with Graph Neural Networks. THE ASTROPHYSICAL JOURNAL, 935(1), 1-15 [10.3847/1538-4357/ac7aa3].

Inferring Halo Masses with Graph Neural Networks

Federico Marinacci;
2022

Abstract

Understanding the halo-galaxy connection is fundamental in order to improve our knowledge on the nature and properties of dark matter. In this work, we build a model that infers the mass of a halo given the positions, velocities, stellar masses, and radii of the galaxies it hosts. In order to capture information from correlations among galaxy properties and their phase space, we use Graph Neural Networks (GNNs), which are designed to work with irregular and sparse data. We train our models on galaxies from more than 2000 state-of-the-art simulations from the Cosmology and Astrophysics with MachinE Learning Simulations project. Our model, which accounts for cosmological and astrophysical uncertainties, is able to constrain the masses of the halos with a similar to 0.2 dex accuracy. Furthermore, a GNN trained on a suite of simulations is able to preserve part of its accuracy when tested on simulations run with a different code that utilizes a distinct subgrid physics model, showing the robustness of our method. The PyTorch Geometric implementation of the GNN is publicly available on GitHub (https://github.com/PabloVD/HaloGraphNet).
2022
Pablo Villanueva-Domingo, Francisco Villaescusa-Navarro, Daniel Angl??s-Alc??zar, Shy Genel, Federico Marinacci, David N. Spergel, et al. (2022). Inferring Halo Masses with Graph Neural Networks. THE ASTROPHYSICAL JOURNAL, 935(1), 1-15 [10.3847/1538-4357/ac7aa3].
Pablo Villanueva-Domingo; Francisco Villaescusa-Navarro; Daniel Angl??s-Alc??zar; Shy Genel; Federico Marinacci; David N. Spergel; Lars Hernquist; Mar...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/900647
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