A machine-learning method for identifying multi-wavelength counterparts of submillimeter galaxies: training and testing using AS2UDS and ALESS
FangXia An (1, 2), S. M. Stach (2), Ian Smail (2), A. M. Swinbank (2),, O. Almaini (3), C. Simpson (4), W. Hartley (3), D. T. Maltby (3), R. J., Ivison (5, 6), V. Arumugam (5, 6), J. L. Wardlow (2), E. A. Cooke (2), B., Gullberg (2), A. P. Thomson (7), Chian-Chou Chen (5)

TL;DR
This paper presents a supervised machine-learning approach to identify multi-wavelength counterparts of submillimeter galaxies, achieving high recovery rates and enabling detection of faint sources in large surveys.
Contribution
The study introduces a novel machine-learning method trained on ALMA data to accurately identify SMG counterparts in single-dish surveys, including faint and diffuse sources.
Findings
Successfully recovered ~85% of ALMA-identified SMGs
Method can detect faint SMGs below ALMA detection threshold
Validated robustness through independent tests and stacking analysis
Abstract
We describe the application of the supervised machine-learning algorithms to identify the likely multi-wavelength counterparts to submillimeter sources detected in panoramic, single-dish submillimeter surveys. As a training set, we employ a sample of 695 ( >1 mJy) submillimeter galaxies (SMGs) with precise identifications from the ALMA follow-up of the SCUBA-2 Cosmology Legacy Survey's UKIDSS-UDS field (AS2UDS). We show that radio emission, near-/mid-infrared colors, photometric redshift, and absolute -band magnitude are effective predictors that can distinguish SMGs from submillimeter-faint field galaxies. Our combined radio+machine-learning method is able to successfully recover 85 percent of ALMA-identified SMGs which are detected in at least three bands from the ultraviolet to radio. We confirm the robustness of our method by dividing our training set into…
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