Result: A machine learning approach to galaxy properties: joint redshift–stellar mass probability distributions with Random Forest

Title:
A machine learning approach to galaxy properties: joint redshift–stellar mass probability distributions with Random Forest
Contributors:
Institut d'Astrophysique de Paris (IAP), Institut national des sciences de l'Univers (INSU - CNRS)-Sorbonne Université (SU)-Centre National de la Recherche Scientifique (CNRS), DES
Source:
Mon.Not.Roy.Astron.Soc.. 502(2):2770-2786
Publisher Information:
CCSD, 2021.
Publication Year:
2021
Collection:
collection:INSU
collection:CNRS
collection:IAP
collection:SORBONNE-UNIVERSITE
collection:SORBONNE-UNIV
collection:SU-SCIENCES
collection:TEST-HALCNRS
collection:SU-TI
collection:ALLIANCE-SU
collection:SUPRA_ASTRO_PHYS
Original Identifier:
ARXIV: 2012.05928
INSPIRE: 1836255
HAL: hal-03122291
Document Type:
Journal article<br />Journal articles
Language:
English
Relation:
info:eu-repo/semantics/altIdentifier/arxiv/2012.05928; info:eu-repo/semantics/altIdentifier/doi/10.1093/mnras/stab164
DOI:
10.1093/mnras/stab164
Rights:
info:eu-repo/semantics/OpenAccess
URL: http://creativecommons.org/licenses/by/
Accession Number:
edshal.hal.03122291v1
Database:
HAL

Further Information

We demonstrate that highly accurate joint redshift–stellar mass probability distribution functions (PDFs) can be obtained using the Random Forest (RF) machine learning (ML) algorithm, even with few photometric bands available. As an example, we use the Dark Energy Survey (DES), combined with the COSMOS2015 catalogue for redshifts and stellar masses. We build two ML models: one containing deep photometry in the griz bands, and the second reflecting the photometric scatter present in the main DES survey, with carefully constructed representative training data in each case. We validate our joint PDFs for 10 699 test galaxies by utilizing the copula probability integral transform and the Kendall distribution function, and their univariate counterparts to validate the marginals. Benchmarked against a basic set-up of the template-fitting code bagpipes, our ML-based method outperforms template fitting on all of our predefined performance metrics. In addition to accuracy, the RF is extremely fast, able to compute joint PDFs for a million galaxies in just under 6 min with consumer computer hardware. Such speed enables PDFs to be derived in real time within analysis codes, solving potential storage issues. As part of this work we have developed galpro 1, a highly intuitive and efficient python package to rapidly generate multivariate PDFs on-the-fly. galpro is documented and available for researchers to use in their cosmology and galaxy evolution studies.