Multi-wavelength properties of radio and machine-learning identified counterparts to submillimeter sources in S2COSMOS
FangXia An (1,2,3), J. M. Simpson (4,1), Ian Smail (1), A. M. Swinbank, (1), Cong Ma (5,6,7), Daizhong Liu (8), P. Lang (8), E. Schinnerer (8), A., Karim (9), B. Magnelli (9), S. Leslie (8), F. Bertoldi (9), Chian-Chou Chen, (10), J. E. Geach (11), Y. Matsuda (12,13)

TL;DR
This study uses radio and machine-learning techniques to identify and analyze the properties of submillimeter galaxy counterparts in the COSMOS field, revealing their redshift distribution, physical characteristics, and clustering behavior.
Contribution
It introduces a novel radio+machine-learning method for identifying SMG counterparts and applies it to a large dataset, expanding the understanding of SMG properties and their dark matter halo environments.
Findings
78% identification rate of counterparts
27% of multiple counterparts are physically associated
SMGs reside in high-mass dark matter halos
Abstract
We identify multi-wavelength counterparts to 1,147 submillimeter sources from the S2COSMOS SCUBA-2 survey of the COSMOS field by employing a recently developed radiomachine-learning method trained on a large sample of ALMA-identified submillimeter galaxies (SMGs), including 260 SMGs identified in the AS2COSMOS pilot survey. In total, we identify 1,222 optical/near-infrared(NIR)/radio counterparts to the 897 S2COSMOS submillimeter sources with S>1.6mJy, yielding an overall identification rate of ()%. We find that ()% of S2COSMOS sources have multiple identified counterparts. We estimate that roughly 27% of these multiple counterparts within the same SCUBA-2 error circles very likely arise from physically associated galaxies rather than line-of-sight projections by chance. The photometric redshift of our radiomachine-learning identified SMGs ranges from z=0.2…
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