EMU/GAMA: A statistical perspective on active galactic nuclei diagnostics
J. Prathap, A. M. Hopkins, R. Carvajal, M. Cowley, S. M. Croom, D. Farrah, I. Prandoni, S. S. Shabala, J. Th. van Loon, C. Pappalardo, K. A. Pimbblet, U. T. Ahmed, M. Bilicki, M. J. I. Brown, D. Leahy, A. Mailvaganam, J. R. Marvil, T. Mukherjee, S. F. Rahman, T. Vernstrom

TL;DR
This paper employs unsupervised machine learning clustering to distinguish and quantify star formation and black hole activity contributions in galaxies across multiple wavelengths, improving AGN diagnostics and classification reliability.
Contribution
It introduces a new IR-radio diagnostic scheme and demonstrates the effectiveness of high-dimensional clustering for radio AGN identification, with high accuracy and completeness.
Findings
Clustering recovers ~90% of star-forming galaxies.
Clustering recovers ~80% of AGN.
New IR-radio diagnostic achieves ~90% reliability.
Abstract
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 90 % of the star forming galaxies (SFGs) and…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Radio Astronomy Observations and Technology
