English

Robust Field-level Likelihood-free Inference with Galaxies

Cosmology and Nongalactic Astrophysics 2023-07-20 v2 Astrophysics of Galaxies Machine Learning

Abstract

We train graph neural networks to perform field-level likelihood-free inference using galaxy catalogs from state-of-the-art hydrodynamic simulations of the CAMELS project. Our models are rotational, translational, and permutation invariant and do not impose any cut on scale. From galaxy catalogs that only contain 33D positions and radial velocities of 1,000\sim 1, 000 galaxies in tiny (25 h1Mpc)3(25~h^{-1}{\rm Mpc})^3 volumes our models can infer the value of Ωm\Omega_{\rm m} with approximately 1212 % precision. More importantly, by testing the models on galaxy catalogs from thousands of hydrodynamic simulations, each having a different efficiency of supernova and AGN feedback, run with five different codes and subgrid models - IllustrisTNG, SIMBA, Astrid, Magneticum, SWIFT-EAGLE -, we find that our models are robust to changes in astrophysics, subgrid physics, and subhalo/galaxy finder. Furthermore, we test our models on 1,0241,024 simulations that cover a vast region in parameter space - variations in 55 cosmological and 2323 astrophysical parameters - finding that the model extrapolates really well. Our results indicate that the key to building a robust model is the use of both galaxy positions and velocities, suggesting that the network have likely learned an underlying physical relation that does not depend on galaxy formation and is valid on scales larger than 10 h1kpc\sim10~h^{-1}{\rm kpc}.

Keywords

Cite

@article{arxiv.2302.14101,
  title  = {Robust Field-level Likelihood-free Inference with Galaxies},
  author = {Natalí S. M. de Santi and Helen Shao and Francisco Villaescusa-Navarro and L. Raul Abramo and Romain Teyssier and Pablo Villanueva-Domingo and Yueying Ni and Daniel Anglés-Alcázar and Shy Genel and Elena Hernandez-Martinez and Ulrich P. Steinwandel and Christopher C. Lovell and Klaus Dolag and Tiago Castro and Mark Vogelsberger},
  journal= {arXiv preprint arXiv:2302.14101},
  year   = {2023}
}

Comments

34 pages, 12 figures. For a video summarizing the results, see https://youtu.be/b59ep7cyPOs

R2 v1 2026-06-28T08:51:02.747Z