2022
DOI: 10.48550/arxiv.2203.03679
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Quasar photometric redshifts from incomplete data using Deep Learning

S. J. Curran

Abstract: Forthcoming astronomical surveys are expected to detect new sources in such large numbers that measuring their spectroscopic redshift measurements will be not be practical. Thus, there is much interest in using machine learning to yield the redshift from the photometry of each object. We are particularly interested in radio sources (quasars) detected with the Square Kilometre Array and have found Deep Learning, trained upon a large optically-selected sample of quasi-stellar objects, to be effective in the pred… Show more

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