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The LSST AGN Data Challenge: Selection Methods
Indexado
WoS WOS:001046561500001
DOI 10.3847/1538-4357/ACE31A
Año 2023
Tipo artículo de investigación

Citas Totales

Autores Afiliación Chile

Instituciones Chile

% Participación
Internacional

Autores
Afiliación Extranjera

Instituciones
Extranjeras


Abstract



Development of the Rubin Observatory Legacy Survey of Space and Time (LSST) includes a series of Data Challenges (DCs) arranged by various LSST Scientific Collaborations that are taking place during the project's preoperational phase. The AGN Science Collaboration Data Challenge (AGNSC-DC) is a partial prototype of the expected LSST data on active galactic nuclei (AGNs), aimed at validating machine learning approaches for AGN selection and characterization in large surveys like LSST. The AGNSC-DC took place in 2021, focusing on accuracy, robustness, and scalability. The training and the blinded data sets were constructed to mimic the future LSST release catalogs using the data from the Sloan Digital Sky Survey Stripe 82 region and the XMM-Newton Large Scale Structure Survey region. Data features were divided into astrometry, photometry, color, morphology, redshift, and class label with the addition of variability features and images. We present the results of four submitted solutions to DCs using both classical and machine learning methods. We systematically test the performance of supervised models (support vector machine, random forest, extreme gradient boosting, artificial neural network, convolutional neural network) and unsupervised ones (deep embedding clustering) when applied to the problem of classifying/clustering sources as stars, galaxies, or AGNs. We obtained classification accuracy of 97.5% for supervised models and clustering accuracy of 96.0% for unsupervised ones and 95.0% with a classic approach for a blinded data set. We find that variability features significantly improve the accuracy of the trained models, and correlation analysis among different bands enables a fast and inexpensive first-order selection of quasar candidates.

Revista



Revista ISSN
Astrophysical Journal 0004-637X

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Disciplinas de Investigación



WOS
Astronomy & Astrophysics
Scopus
Sin Disciplinas
SciELO
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Publicaciones WoS (Ediciones: ISSHP, ISTP, AHCI, SSCI, SCI), Scopus, SciELO Chile.

Colaboración Institucional



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Autores - Afiliación



Ord. Autor Género Institución - País
1 Savic, Dorde V. - Univ Liege - Bélgica
Astron Observ - Serbia
2 Jankov, Isidora Mujer Univ Belgrade - Serbia
3 Yu, Weixiang - Drexel Univ - Estados Unidos
4 Petrecca, Vincenzo - Univ Napoli Federico II - Italia
Istituto Nazionale di Astrofisica - Italia
INAF - Italia
5 Temple, M. J. Hombre Universidad Diego Portales - Chile
6 Ni, Q. - Max Planck Inst Extraterr Phys MPE - Alemania
7 Shirley, R. Hombre Univ Southampton - Reino Unido
UNIV CAMBRIDGE - Reino Unido
8 Kovacevic, Andjelka B. - Univ Belgrade - Serbia
CASSACA - China
9 Nikolic, Mladen - Univ Belgrade - Serbia
10 Ilic, Dragana Mujer Univ Belgrade - Serbia
UNIV HAMBURG - Alemania
11 Popovic, Luka C. Hombre Astron Observ - Serbia
Univ Belgrade - Serbia
12 Paolillo, M. Hombre
13 Panda, Swayamtrupta - MCTI - Brasil
Polish Acad Sci - Polonia
14 Ciprijanovic, Aleksandra - Fermilab Natl Accelerator Lab - Estados Unidos
15 Richards, G. T. Hombre Drexel Univ - Estados Unidos

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Financiamiento



Fuente
Alexander von Humboldt Foundation
Gordon and Betty Moore Foundation
Alfred P. Sloan Foundation
Ministry of Education, Science, and Technological Development of the Republic of Serbia
Fermi Research Alliance, LLC
Science Fund of the Republic of Serbia
Polish Funding Agency National Science Centre
Chinese Academy of Sciences President's International Fellowship Initiative (PIFI)
University of Belgrade-Faculty of Mathematics
Conselho Nacional de Desenvolvimento Cientfico e Tecnolgico (CNPq) Fellowship
LSST Corporation's Enabling Science Program
National Science Foundation through the Data Infrastructure Building Blocks (DIBBs) program
U.S. Department of Energy (DOE), Office of Science
ANID (Fondecyt Proyecto)
Astronomical Observatory through Ministry of Education, Science, and Technological Development of the Republic of Serbia
F.R.S. FNRS

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Agradecimientos



Agradecimiento
We thank the anonymous referees for valuable comments that improved the quality of the manuscript. Prizes for participating in data challenges were funded by the LSST Corporation's Enabling Science Program. D.S. acknowledges the support by the F.R.S. FNRS under grant PDR T.0116.21. D.S. and L.C.P. acknowledge support by the Astronomical Observatory (the contract No_ 451-03-68/2022-14/200002), through the grants by the Ministry of Education, Science, and Technological Development of the Republic of Serbia. D.S. acknowledges support by the Science Fund of the Republic of Serbia, PROMIS No_ 6060916, BOWIE. D.I., A.B.K., and L.C.P. acknowledge funding provided by the University of Belgrade-Faculty of Mathematics (the contract No_ 451-03-68/2022-14/200104) through the grants by the Ministry of Education, Science, and Technological Development of the Republic of Serbia. D.I. acknowledges the support of the Alexander von Humboldt Foundation. A.B.K. and L.C.P. thank the support of the Chinese Academy of Sciences President's International Fellowship Initiative (PIFI) for visiting scientists. M.J.T. acknowledges support from ANID (Fondecyt Proyecto 3220516). S.P. acknowledges financial support from the Conselho Nacional de Desenvolvimento Cientifico e Tecnologico (CNPq) Fellowship (No_ 164753/2020-6) and the Polish Funding Agency National Science Centre, project No_ 2017/26/A/ST9/00756 (MAESTRO 9). A.C. acknowledges support from the Fermi Research Alliance, LLC under Contract No_ DE-AC02-07CH11359 with the U.S. Department of Energy (DOE), Office of Science, Office of High Energy Physics.The authors thank Feige Wang and Jinyi Yang for constructing and providing the highZQso catalog.This research makes use of the SciServer science platform (sciserver.org). SciServer is a collaborative research environment for large-scale data-driven science. It is being developed at, and administered by, the Institute for Data Intensive Engineering and Science at Johns Hopkins University. SciServer is funded by the National Science Foundation through the Data Infrastructure Building Blocks (DIBBs) program and others, as well as by the Alfred P. Sloan Foundation and the Gordon and Betty Moore Foundation. Software: python (Van Rossum & amp; Drake 1995), jupyter (Kluyver et al. 2016). ML packages: numpy and scipy (van der Walt et al. 2011), pandas (McKinney et al. 2010), scikit-learn (Pedregosa et al. 2011), keras (Chollet et al. 2015), tensorflow (Abadi et al. 2016). Data visualization: matplotlib (Hunter 2007), seaborn (Waskom et al. 2017).

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