A machine-learning approach for identifying the counterparts of submillimetre galaxies and applications to the GOODS-North field

Volume: 489, Issue: 2, Pages: 1770 - 1786
Published: Aug 12, 2019
Abstract
Identifying the counterparts of submillimetre (submm) galaxies (SMGs) in multiwavelength images is a critical step towards building accurate models of the evolution of strongly star-forming galaxies in the early Universe. However, obtaining a statistically significant sample of robust associations is very challenging due to the poor angular resolution of single-dish submm facilities. Recently, a large sample of single-dish-detected SMGs in the...
Paper Details
Title
A machine-learning approach for identifying the counterparts of submillimetre galaxies and applications to the GOODS-North field
Published Date
Aug 12, 2019
Volume
489
Issue
2
Pages
1770 - 1786
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