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

Author:

Liu Ruihan Henry1,Hill Ryley1,Scott Douglas1,Almaini Omar2ORCID,An Fangxia34,Gubbels Chris1,Hsu Li-Ting5,Lin Lihwai5,Smail Ian4ORCID,Stach Stuart4

Affiliation:

1. Department of Physics and Astronomy, University of British Columbia, 6224 Agricultural Road, Vancouver, BC V6T 1Z1, Canada

2. School of Physics and Astronomy, University of Nottingham, University Park, Nottingham NG7 2RD, UK

3. Department of Physics and Astronomy, University of the Western Cape, Robert Sobukwe Road, 7535 Bellville, Cape Town, South Africa

4. Centre for Extragalactic Astronomy, Department of Physics, Durham University, South Road, Durham DH1 3LE, UK

5. Academia Sinica, Institute of Astronomy and Astrophysics (ASIAA), PO Box 23-141, Taipei 10617, Taiwan

Abstract

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 UKIDSS UDS field, a subset of the SCUBA-2 Cosmology Legacy Survey (S2CLS), was followed up with the Atacama Large Millimeter/submillimeter Array (ALMA), which has provided the resolution necessary for identification in optical and near-infrared images. We use this ALMA sample to develop a training set suitable for machine-learning (ML) algorithms to determine how to identify SMG counterparts in multiwavelength images, using a combination of magnitudes and other derived features. We test several ML algorithms and find that a deep neural network performs the best, accurately identifying 85 per cent of the ALMA-detected optical SMG counterparts in our cross-validation tests. When we carefully tune traditional colour-cut methods, we find that the improvement in using machine learning is modest (about 5 per cent), but importantly it comes at little additional computational cost. We apply our trained neural network to the GOODS-North field, which also has single-dish submm observations from the S2CLS and deep multiwavelength data but little high-resolution interferometric submm imaging, and we find that we are able to classify SMG counterparts for 36/67 of the single-dish submm sources. We discuss future improvements to our ML approach, including combining ML with spectral energy distribution fitting techniques and using longer wavelength data as additional features.

Funder

Natural Sciences and Engineering Research Council of Canada

Science and Technology Facilities Council

European Research Council

National Astronomical Observatory of Japan

Korea Astronomy and Space Science Institute

Ministry of Finance

Chinese Academy of Sciences

National Science Foundation

National Institutes of Natural Sciences

National Research Council Canada

Ministry of Science and Technology, Taiwan

Jet Propulsion Laboratory

California Institute of Technology

National Aeronautics and Space Administration

Institut National des Sciences de l’Univers of the Centre National de la Recherche Scientifique of France

University of Hawaii

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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