Star formation rates (SFRs) are crucial to constrain theories of galaxy formation and evolution. SFRs are usually estimated via spectroscopic observations requiring large amounts of telescope time. We explore an alternative approach based on the photometric estimation of global SFRs for large samples of galaxies, by using methods such as automatic parameter space optimisation, and supervised machine learning models. We demonstrate that, with such approach, accurate multiband photometry allows to estimate reliable SFRs. We also investigate how the use of photometric rather than spectroscopic redshifts, affects the accuracy of derived global SFRs. Finally, we provide a publicly available catalogue of SFRs for more than 27 million galaxies extracted from the Sloan Digital Sky Survey Data Release 7. The catalogue will be made available through the Vizier facility.

Photometric SFR using machine learning / Delli Veneri, M.; Cavuoti, S.; Brescia, M.; Longo, G.; Riccio, G.. - (2019). [10.26093/cds/vizier]

Photometric SFR using machine learning

Delli Veneri M.;Brescia M.;Longo G.;
2019

Abstract

Star formation rates (SFRs) are crucial to constrain theories of galaxy formation and evolution. SFRs are usually estimated via spectroscopic observations requiring large amounts of telescope time. We explore an alternative approach based on the photometric estimation of global SFRs for large samples of galaxies, by using methods such as automatic parameter space optimisation, and supervised machine learning models. We demonstrate that, with such approach, accurate multiband photometry allows to estimate reliable SFRs. We also investigate how the use of photometric rather than spectroscopic redshifts, affects the accuracy of derived global SFRs. Finally, we provide a publicly available catalogue of SFRs for more than 27 million galaxies extracted from the Sloan Digital Sky Survey Data Release 7. The catalogue will be made available through the Vizier facility.
2019
Photometric SFR using machine learning / Delli Veneri, M.; Cavuoti, S.; Brescia, M.; Longo, G.; Riccio, G.. - (2019). [10.26093/cds/vizier]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/900877
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