Robust field-level inference with dark matter halos
Helen Shao, Francisco Villaescusa-Navarro, Pablo Villanueva-Domingo,, Romain Teyssier, Lehman H. Garrison, Marco Gatti, Derek Inman, Yueying Ni,, Ulrich P. Steinwandel, Mihir Kulkarni, Eli Visbal, Greg L. Bryan, Daniel, Angles-Alcazar, Tiago Castro, Elena Hernandez-Martinez

TL;DR
This paper develops graph neural networks trained on dark matter halo catalogues to perform robust, likelihood-free inference of cosmological parameters, demonstrating high accuracy and cross-code robustness in N-body simulations.
Contribution
The authors introduce a permutation, translation, and rotation invariant GNN model that infers cosmological parameters from halo catalogues without scale restrictions, showing robustness across multiple simulation codes.
Findings
Achieves ~6% mean relative error in inferring _m and \u03c3_8.
Model trained on N-body simulations generalizes across five different simulation codes.
Including additional halo properties improves information extraction but reduces robustness.
Abstract
We train graph neural networks on halo catalogues from Gadget N-body simulations to perform field-level likelihood-free inference of cosmological parameters. The catalogues contain 5,000 halos with masses in a periodic volume of ; every halo in the catalogue is characterized by several properties such as position, mass, velocity, concentration, and maximum circular velocity. Our models, built to be permutationally, translationally, and rotationally invariant, do not impose a minimum scale on which to extract information and are able to infer the values of and with a mean relative error of , when using positions plus velocities and positions plus masses, respectively. More importantly, we find that our models are very robust: they can infer the value of and …
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Computational Physics and Python Applications · Scientific Research and Discoveries
