Euclid preparation LI. Forecasting the recovery of galaxy physical properties and their relations with template-fitting and machine-learning methods

dc.contributorAalto-yliopistofi
dc.contributorAalto Universityen
dc.contributor.authorEnia, A.
dc.contributor.authorBolzonella, M.
dc.contributor.authorPozzetti, L.
dc.contributor.authorHumphrey, A.
dc.contributor.authorCunha, P. A.C.
dc.contributor.authorHartley, W. G.
dc.contributor.authorDubath, F.
dc.contributor.authorPaltani, S.
dc.contributor.authorLopez Lopez, X.
dc.contributor.authorQuai, S.
dc.contributor.authorBardelli, S.
dc.contributor.authorBisigello, L.
dc.contributor.authorCavuoti, S.
dc.contributor.authorDe Lucia, G.
dc.contributor.authorGinolfi, M.
dc.contributor.authorGrazian, A.
dc.contributor.authorSiudek, M.
dc.contributor.authorTortora, C.
dc.contributor.authorZamorani, G.
dc.contributor.authorAghanim, N.
dc.contributor.authorAltieri, B.
dc.contributor.authorAmara, A.
dc.contributor.authorAndreon, S.
dc.contributor.authorAuricchio, N.
dc.contributor.authorBaccigalupi, C.
dc.contributor.authorBaldi, M.
dc.contributor.authorBender, R.
dc.contributor.authorBodendorf, C.
dc.contributor.authorBonino, D.
dc.contributor.authorBranchini, E.
dc.contributor.authorBrescia, M.
dc.contributor.authorBrinchmann, J.
dc.contributor.authorCamera, S.
dc.contributor.authorCapobianco, V.
dc.contributor.authorCarbone, C.
dc.contributor.authorCarretero, J.
dc.contributor.authorCasas, S.
dc.contributor.authorCastander, F. J.
dc.contributor.authorCastellano, M.
dc.contributor.authorCastignani, G.
dc.contributor.authorCimatti, A.
dc.contributor.authorColodro-Conde, C.
dc.contributor.authorCongedo, G.
dc.contributor.authorNiemi, S. M.
dc.contributor.authorSchneider, P.
dc.contributor.authorWang, Y.
dc.contributor.authorCalabrese, M.
dc.contributor.authorGozaliasl, G.
dc.contributor.authorHall, A.
dc.contributor.authorHjorth, J.
dc.contributor.author, Euclid Collaboration
dc.contributor.departmentDepartment of Computer Scienceen
dc.contributor.organizationUniversitá di Bologna
dc.contributor.organizationIstituto di Astrofisica Spaziale e Fisica Cosmica di Bologna
dc.contributor.organizationUniversity of Porto
dc.contributor.organizationUniversity of Geneva
dc.contributor.organizationOsservatorio Astronomico di Capodimonte
dc.contributor.organizationOsservatorio Astronomico di Trieste
dc.contributor.organizationUniversity of Florence
dc.contributor.organizationINAF - Osservatorio Astronomico di Padova
dc.contributor.organizationUniversity of La Laguna
dc.contributor.organizationUniversité Paris-Saclay
dc.contributor.organizationUrbanización Villafranca Del Castillo
dc.contributor.organizationUniversity of Surrey
dc.contributor.organizationOsservatorio Astronomico di Brera
dc.contributor.organizationMax Planck Institute for Extraterrestrial Physics
dc.contributor.organizationNational Institute for Astrophysics (INAF)
dc.contributor.organizationIstituto Nazionale di Astrofisica (INAF)
dc.contributor.organizationCentro de Investigaciones Energéticas, Medioambientales y Tecnológicas - CIEMAT
dc.contributor.organizationRWTH Aachen University
dc.contributor.organizationCSIC - Institute of Space Sciences
dc.contributor.organizationOsservatorio Astronomico di Roma
dc.contributor.organizationInstituto de Astrofísica de Canarias
dc.contributor.organizationUniversity of Edinburgh
dc.contributor.organizationEuropean Space Research and Technology Centre
dc.contributor.organizationUniversity of Bonn
dc.contributor.organizationCalifornia Institute of Technology
dc.contributor.organizationNiels Bohr Institute
dc.date.accessioned2024-11-29T11:41:57Z
dc.date.available2024-11-29T11:41:57Z
dc.date.issued2024-11-01
dc.descriptionPublisher Copyright: © The Authors 2024.
dc.description.abstractEuclid will collect an enormous amount of data during the mission’s lifetime, observing billions of galaxies in the extragalactic sky. Along with traditional template-fitting methods, numerous machine learning (ML) algorithms have been presented for computing their photometric redshifts and physical parameters (PPs), requiring significantly less computing effort while producing equivalent performance measures. However, their performance is limited by the quality and amount of input information entering the model (the features), to a level where the recovery of some well-established physical relationships between parameters might not be guaranteed – for example, the star-forming main sequence (SFMS). To forecast the reliability of Euclid photo-zs and PPs calculations, we produced two mock catalogs simulating the photometry with the UNIONS ugriz and Euclid filters. We simulated the Euclid Wide Survey (EWS) and Euclid Deep Fields (EDF), alongside two auxiliary fields. We tested the performance of a template-fitting algorithm (Phosphoros) and four ML methods in recovering photo-zs, PPs (stellar masses and star formation rates), and the SFMS on the simulated Euclid fields. To mimic the Euclid processing as closely as possible, the models were trained with Phosphoros-recovered labels and tested on the simulated ground truth. For the EWS, we found that the best results are achieved with a mixed labels approach, training the models with wide survey features and labels from the Phosphoros results on deeper photometry, that is, with the best possible set of labels for a given photometry. This imposes a prior to the input features, helping the models to better discern cases in degenerate regions of feature space, that is, when galaxies have similar magnitudes and colors but different redshifts and PPs, with performance metrics even better than those found with Phosphoros. We found no more than 3% performance degradation using a COSMOS-like reference sample or removing u band data, which will not be available until after data release DR1. The best results are obtained for the EDF, with appropriate recovery of photo-z, PPs, and the SFMS.en
dc.description.versionPeer revieweden
dc.format.extent26
dc.format.mimetypeapplication/pdf
dc.identifier.citationEnia, A, Bolzonella, M, Pozzetti, L, Humphrey, A, Cunha, P A C, Hartley, W G, Dubath, F, Paltani, S, Lopez Lopez, X, Quai, S, Bardelli, S, Bisigello, L, Cavuoti, S, De Lucia, G, Ginolfi, M, Grazian, A, Siudek, M, Tortora, C, Zamorani, G, Aghanim, N, Altieri, B, Amara, A, Andreon, S, Auricchio, N, Baccigalupi, C, Baldi, M, Bender, R, Bodendorf, C, Bonino, D, Branchini, E, Brescia, M, Brinchmann, J, Camera, S, Capobianco, V, Carbone, C, Carretero, J, Casas, S, Castander, F J, Castellano, M, Castignani, G, Cimatti, A, Colodro-Conde, C, Congedo, G, Niemi, S M, Schneider, P, Wang, Y, Calabrese, M, Gozaliasl, G, Hall, A, Hjorth, J & Euclid Collaboration 2024, ' Euclid preparation LI. Forecasting the recovery of galaxy physical properties and their relations with template-fitting and machine-learning methods ', Astronomy and Astrophysics, vol. 691, A175, pp. 1-26 . https://doi.org/10.1051/0004-6361/202451425en
dc.identifier.doi10.1051/0004-6361/202451425
dc.identifier.issn0004-6361
dc.identifier.issn1432-0746
dc.identifier.otherPURE UUID: 76d6aa00-e0c0-4fbd-840b-31937f8525f5
dc.identifier.otherPURE ITEMURL: https://research.aalto.fi/en/publications/76d6aa00-e0c0-4fbd-840b-31937f8525f5
dc.identifier.otherPURE LINK: http://www.scopus.com/inward/record.url?scp=85208801921&partnerID=8YFLogxK
dc.identifier.otherPURE FILEURL: https://research.aalto.fi/files/165495768/Euclid_preparation_LI._Forecasting_the_recovery_of_galaxy_physical_properties_and_their_relations_with_template-fitting_and_machine-learning_methods.pdf
dc.identifier.urihttps://aaltodoc.aalto.fi/handle/123456789/132025
dc.identifier.urnURN:NBN:fi:aalto-202411297530
dc.language.isoenen
dc.publisherEDP Sciences
dc.relation.ispartofseriesAstronomy and Astrophysics
dc.relation.ispartofseriesVolume 691, pp. 1-26
dc.rightsopenAccessen
dc.subject.keywordgalaxies: evolution
dc.subject.keywordgalaxies: fundamental parameters
dc.subject.keywordgalaxies: general
dc.subject.keywordmethods: data analysis
dc.subject.keywordsurveys
dc.titleEuclid preparation LI. Forecasting the recovery of galaxy physical properties and their relations with template-fitting and machine-learning methodsen
dc.typeA1 Alkuperäisartikkeli tieteellisessä aikakauslehdessäfi
dc.type.versionpublishedVersion

Files