Litcius/Paper detail

Optimal, fast, and robust inference of reionization-era cosmology with the 21cmPIE-INN

Benedikt Schosser, Caroline Heneka, Tilman Plehn

2025SciPost Physics Core12 citationsDOIOpen Access PDF

Abstract

Modern machine learning will allow for simulation-based inference from reionization-era 21cm observations at the Square Kilometre Array. Our framework combines a convolutional summary network and a conditional invertible network through a physics-inspired latent representation. It allows for an efficient and extremely fast determination of the posteriors of astrophysical and cosmological parameters, jointly with well-calibrated and on average unbiased summaries. The sensitivity to non-Gaussian information makes our method a promising alternative to the established power spectra.

Topics & Concepts

ReionizationCosmologyInferenceRobustness (evolution)PhysicsComputer scienceAstrophysicsArtificial intelligenceBiologyRedshiftGalaxyGeneticsGeneRadio Astronomy Observations and TechnologyGalaxies: Formation, Evolution, PhenomenaAstrophysics and Cosmic Phenomena