Constraining the giant radio galaxy population with machine learning and Bayesian inference
Rafa\"el I.J. Mostert, Martijn S.S.L. Oei, B. Barkus, Lara Alegre,, Martin J. Hardcastle, Kenneth J. Duncan, Huub J.A. R\"ottgering, Reinout J., van Weeren, Maya Horton

TL;DR
This paper automates the detection and characterization of giant radio galaxies using machine learning and Bayesian inference, significantly expanding the known population and providing insights into their cosmological distribution and magnetic fields.
Contribution
It introduces a novel automated pipeline for radio-optical catalog creation, giant galaxy identification, and population modeling with Bayesian inference, expanding the known GRG census.
Findings
Confirmed 8,244 new giant radio galaxies, increasing the total to over 11,500.
Estimated the comoving GRG number density as 13 ± 10 (100 Mpc)$^{-3}$.
Suggested that magnetic fields from giants may pervade a significant part of the Cosmic Web.
Abstract
Large-scale sky surveys at low frequencies, like the LOFAR Two-metre Sky Survey (LoTSS), allow for the detection and characterisation of unprecedented numbers of giant radio galaxies (GRGs, or 'giants'). In this work, by automating the creation of radio--optical catalogues, we aim to significantly expand the census of known giants. We then combine this sample with a forward model to constrain GRG properties of cosmological interest. In particular, we automate radio source component association through machine learning and optical host identification for resolved radio sources. We create a radio--optical catalogue for the full LoTSS Data Release 2 (DR2) and select all possible giants. We combine our candidates with an existing catalogue of LoTSS DR2 crowd-sourced GRG candidates and visually confirm or reject them. To infer intrinsic GRG properties from GRG observations, we develop…
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