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    Galaxy morphological classification in deep-wide surveys via unsupervised machine learning

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    Author
    Martin, G
    Kaviraj, S
    Hocking, A
    Read, S C
    Geach, J E
    Affiliation
    Univ Arizona, Steward Observ
    Issue Date
    2019-10-26
    Keywords
    methods: numerical
    surveys
    galaxies: structure
    
    Metadata
    Show full item record
    Publisher
    OXFORD UNIV PRESS
    Citation
    G Martin, S Kaviraj, A Hocking, S C Read, J E Geach, Galaxy morphological classification in deep-wide surveys via unsupervised machine learning, Monthly Notices of the Royal Astronomical Society, Volume 491, Issue 1, January 2020, Pages 1408–1426, https://doi.org/10.1093/mnras/stz3006
    Journal
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
    Rights
    Copyright © 2019 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Society.
    Collection Information
    This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.
    Abstract
    Galaxy morphology is a fundamental quantity, which is essential not only for the full spectrum of galaxy-evolution studies, but also for a plethora of science in observational cosmology (e.g. as a prior for photometric-redshift measurements and as contextual data for transient light-curve classifications). While a rich literature exists on morphological-classification techniques, the unprecedented data volumes, coupled, in some cases, with the short cadences of forthcoming 'Big-Data' surveys (e.g. from the LSST), present novel challenges for this field. Large data volumes make such data sets intractable for visual inspection (even via massively distributed platforms like Galaxy Zoo), while short cadences make it difficult to employ techniques like supervised machine learning, since it may be impractical to repeatedly produce training sets on short time-scales. Unsupervised machine learning, which does not require training sets, is ideally suited to the morphological analysis of new and forthcoming surveys. Here, we employ an algorithm that performs clustering of graph representations, in order to group image patches with similar visual properties and objects constructed from those patches, like galaxies. We implement the algorithm on the Hyper-Suprime-Cam Subaru-Strategic-Program Ultra-Deep survey, to autonomously reduce the galaxy population to a small number (160) of 'morphological clusters', populated by galaxies with similar morphologies, which are then benchmarked using visual inspection. The morphological classifications (which we release publicly) exhibit a high level of purity, and reproduce known trends in key galaxy properties as a function of morphological type at z < 1 (e.g. stellar-mass functions, rest-frame colours, and the position of galaxies on the star-formation main sequence). Our study demonstrates the power of unsupervised machine learning in performing accurate morphological analysis, which will become indispensable in this new era of deep-wide surveys.
    ISSN
    0035-8711
    DOI
    10.1093/mnras/stz3006
    Version
    Final published version
    ae974a485f413a2113503eed53cd6c53
    10.1093/mnras/stz3006
    Scopus Count
    Collections
    UA Faculty Publications

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