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Main Authors: Prathap, J., Hopkins, A. M., Carvajal, R., Cowley, M., Croom, S. M., Farrah, D., Prandoni, I., Shabala, S. S., van Loon, J. Th., Pappalardo, C., Pimbblet, K. A., Ahmed, U. T., Bilicki, M., Brown, M. J. I., Leahy, D., Mailvaganam, A., Marvil, J. R., Mukherjee, T., Rahman, S. F., Vernstrom, T., Willingham, J., Zafar, T.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.05265
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author Prathap, J.
Hopkins, A. M.
Carvajal, R.
Cowley, M.
Croom, S. M.
Farrah, D.
Prandoni, I.
Shabala, S. S.
van Loon, J. Th.
Pappalardo, C.
Pimbblet, K. A.
Ahmed, U. T.
Bilicki, M.
Brown, M. J. I.
Leahy, D.
Mailvaganam, A.
Marvil, J. R.
Mukherjee, T.
Rahman, S. F.
Vernstrom, T.
Willingham, J.
Zafar, T.
author_facet Prathap, J.
Hopkins, A. M.
Carvajal, R.
Cowley, M.
Croom, S. M.
Farrah, D.
Prandoni, I.
Shabala, S. S.
van Loon, J. Th.
Pappalardo, C.
Pimbblet, K. A.
Ahmed, U. T.
Bilicki, M.
Brown, M. J. I.
Leahy, D.
Mailvaganam, A.
Marvil, J. R.
Mukherjee, T.
Rahman, S. F.
Vernstrom, T.
Willingham, J.
Zafar, T.
contents While it is well known that galaxies are composites of many emission processes, quantifying the various contributions remains challenging. In this work, we use unsupervised machine learning based clustering algorithms to evaluate the agreement between the clustering tools and astrophysical classifications, and hence quantify the fractional contributions of star formation processes and nuclear black hole activity to the total galaxy energy budget of radio sources. We perform clustering on the multiwavelength (optical, infrared (IR), and radio) active galactic nuclei (AGN) diagnostic spaces, using the data from the G09 and G23 fields from the Galaxy and Mass Assembly (GAMA) survey, Evolutionary Map of the Universe (EMU) survey, and the Wide-field Infrared Survey Explorer (WISE). We find that the statistical clustering recovers $\approx$ 90 % of the star forming galaxies (SFGs) and $\approx$ 80 % of the AGN. We define a new IR-radio AGN diagnostic scheme that identifies radio AGN from IR SFGs and AGN, corresponding to the KMeans cluster with approximately 90 % reliability. We demonstrate the superior power of radio AGN selection in higher dimensions using a three-dimensional space composed of directly observable parameters ($\rm W_1-W_2$ colour, $\rm W_2$ magnitude, and the 1.4 GHz radio flux density). This novel three dimensional diagnostic shows immense potential in radio AGN selection that is close to 90 % reliable and 90 % complete. We also publish a catalogue of radio sources in the EMU survey with associated probabilities for them to be active in the optical regime, through which we emphasise the philosophy of considering a galaxy to be composed of various fractions rather than a binary classification of SFGs and AGN.
format Preprint
id arxiv_https___arxiv_org_abs_2603_05265
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EMU/GAMA: A statistical perspective on active galactic nuclei diagnostics
Prathap, J.
Hopkins, A. M.
Carvajal, R.
Cowley, M.
Croom, S. M.
Farrah, D.
Prandoni, I.
Shabala, S. S.
van Loon, J. Th.
Pappalardo, C.
Pimbblet, K. A.
Ahmed, U. T.
Bilicki, M.
Brown, M. J. I.
Leahy, D.
Mailvaganam, A.
Marvil, J. R.
Mukherjee, T.
Rahman, S. F.
Vernstrom, T.
Willingham, J.
Zafar, T.
Astrophysics of Galaxies
While it is well known that galaxies are composites of many emission processes, quantifying the various contributions remains challenging. In this work, we use unsupervised machine learning based clustering algorithms to evaluate the agreement between the clustering tools and astrophysical classifications, and hence quantify the fractional contributions of star formation processes and nuclear black hole activity to the total galaxy energy budget of radio sources. We perform clustering on the multiwavelength (optical, infrared (IR), and radio) active galactic nuclei (AGN) diagnostic spaces, using the data from the G09 and G23 fields from the Galaxy and Mass Assembly (GAMA) survey, Evolutionary Map of the Universe (EMU) survey, and the Wide-field Infrared Survey Explorer (WISE). We find that the statistical clustering recovers $\approx$ 90 % of the star forming galaxies (SFGs) and $\approx$ 80 % of the AGN. We define a new IR-radio AGN diagnostic scheme that identifies radio AGN from IR SFGs and AGN, corresponding to the KMeans cluster with approximately 90 % reliability. We demonstrate the superior power of radio AGN selection in higher dimensions using a three-dimensional space composed of directly observable parameters ($\rm W_1-W_2$ colour, $\rm W_2$ magnitude, and the 1.4 GHz radio flux density). This novel three dimensional diagnostic shows immense potential in radio AGN selection that is close to 90 % reliable and 90 % complete. We also publish a catalogue of radio sources in the EMU survey with associated probabilities for them to be active in the optical regime, through which we emphasise the philosophy of considering a galaxy to be composed of various fractions rather than a binary classification of SFGs and AGN.
title EMU/GAMA: A statistical perspective on active galactic nuclei diagnostics
topic Astrophysics of Galaxies
url https://arxiv.org/abs/2603.05265