Selection of powerful radio galaxies with machine learning
R. Carvajal, I. Matute, J. Afonso, R. P. Norris, K. J. Luken, P., S\'anchez-S\'aez, P. A. C. Cunha, A. Humphrey, H. Messias, S. Amarantidis, D., Barbosa, H. A. Cruz, H. Miranda, A. Paulino-Afonso, and C. Pappalardo

TL;DR
This paper presents a machine learning pipeline that predicts radio-loud AGNs and estimates their redshifts using multi-wavelength data, achieving high recovery rates and providing insights into AGN properties.
Contribution
The study introduces a novel ML pipeline combining tree-based and gradient boosting models for AGN detection and redshift estimation with improved accuracy over random selection.
Findings
96% AGN recovery in HETDEX validation
50% of radio sources recovered from AGN candidates
Redshift estimation with σ_NMAD = 0.07 in HETDEX
Abstract
We developed and trained a pipeline of three machine learning (ML) models than can predict which sources are more likely to be an AGN and to be detected in specific radio surveys. Also, it can estimate redshift values for predicted radio-detectable AGNs. These models, which combine predictions from tree-based and gradient-boosting algorithms, have been trained with multi-wavelength data from near-infrared-selected sources in the Hobby-Eberly Telescope Dark Energy Experiment (HETDEX) Spring field. Training, testing, calibration, and validation were carried out in the HETDEX field. Further validation was performed on near-infrared-selected sources in the Stripe 82 field. In the HETDEX validation subset, our pipeline recovers 96% of the initially labelled AGNs and, from AGNs candidates, we recover 50% of previously detected radio sources. For Stripe 82, these numbers are 94% and 55%.…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Galaxies: Formation, Evolution, Phenomena · Gamma-ray bursts and supernovae
