2021
DOI: 10.1051/0004-6361/202141360
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Nonsequential neural network for simultaneous, consistent classification, and photometric redshifts of OTELO galaxies

Abstract: Context. Computational techniques are essential for mining large databases produced in modern surveys with value-added products. Aims. This paper presents a machine learning procedure to carry out a galaxy morphological classification and photometric redshift estimates simultaneously. Currently, only a spectral energy distribution (SED) fitting has been used to obtain these results all at once. Methods. We used the ancillary data gathered in the OTELO catalog and designed a nonsequential neural network that ac… Show more

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References 73 publications
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