Nonsequential neural network for simultaneous, consistent classification, and photometric redshifts of OTELO galaxies
Ver/ Abrir
Registro completo
Mostrar el registro completo DCAutoría
Diego, J.A.; Nadolny, J.; Bongiovanni, A.; Cepa, J.; Lara-Lóspez, M.A.; Gallego, J.; Cerviño, M.; Sánchez Portal, M.; González Serrano, José Ignacio
Fecha
2021-11Derechos
© ESO
Publicado en
Astronomy & Astrophysics, 2021, 655, A56
Editorial
EDP Sciences
Enlace a la publicación
Palabras clave
Galaxy: general
Methods: statistical
Resumen/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 accepts optical and near-infrared photometry as input. The network transfers the results of the morphological classification task to the redshift fitting process to ensure consistency between both procedures. Results. The results successfully recover the morphological classification and the redshifts of the test sample, reducing catastrophic redshift outliers produced by an SED fitting and avoiding possible discrepancies between independent classification and redshift estimates. Our technique may be adapted to include galaxy images to improve the classification.
Colecciones a las que pertenece
- D15 Artículos [846]
- D15 Proyectos de Investigación [161]