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Host Galaxy Identification for Supernova Surveys

Authors :
Gupta, Ravi R.
Kuhlmann, Steve
Kovacs, Eve
Spinka, Harold
Kessler, Richard
Goldstein, Daniel A.
Liotine, Camille
Pomian, Katarzyna
D'Andrea, Chris B.
Sullivan, Mark
Carretero, Jorge
Castander, Francisco J.
Nichol, Robert C.
Finley, David A.
Fischer, John A.
Foley, Ryan J.
Kim, Alex G.
Papadopoulos, Andreas
Sako, Masao
Scolnic, Daniel M.
Smith, Mathew
Tucker, Brad E.
Uddin, Syed
Wolf, Rachel C.
Yuan, Fang
Abbott, Tim M. C.
Abdalla, Filipe B.
Benoit-Levy, Aurelien
Bertin, Emmanuel
Brooks, David
Rosell, Aurelio Carnero
Kind, Matias Carrasco
Cunha, Carlos E.
da Costa, Luiz N.
Desai, Shantanu
Doel, Peter
Eifler, Tim F.
Evrard, August E.
Flaugher, Brenna
Fosalba, Pablo
Gaztanaga, Enrique
Gruen, Daniel
Gruendl, Robert
James, David J.
Kuehn, Kyler
Kuropatkin, Nikolay
Maia, Marcio A. G.
Marshall, Jennifer L.
Miquel, Ramon
Plazas, Andres A.
Romer, A. Kathy
Sanchez, Eusebio
Schubnell, Michael
Sevilla-Noarbe, Ignacio
Sobreira, Flavia
Suchyta, Eric
Swanson, Molly E. C.
Tarle, Gregory
Walker, Alistair R.
Wester, William
Publication Year :
2016

Abstract

Host galaxy identification is a crucial step for modern supernova (SN) surveys such as the Dark Energy Survey (DES) and the Large Synoptic Survey Telescope (LSST), which will discover SNe by the thousands. Spectroscopic resources are limited, so in the absence of real-time SN spectra these surveys must rely on host galaxy spectra to obtain accurate redshifts for the Hubble diagram and to improve photometric classification of SNe. In addition, SN luminosities are known to correlate with host-galaxy properties. Therefore, reliable identification of host galaxies is essential for cosmology and SN science. We simulate SN events and their locations within their host galaxies to develop and test methods for matching SNe to their hosts. We use both real and simulated galaxy catalog data from the Advanced Camera for Surveys General Catalog and MICECATv2.0, respectively. We also incorporate "hostless" SNe residing in undetected faint hosts into our analysis, with an assumed hostless rate of 5%. Our fully automated algorithm is run on catalog data and matches SNe to their hosts with 91% accuracy. We find that including a machine learning component, run after the initial matching algorithm, improves the accuracy (purity) of the matching to 97% with a 2% cost in efficiency (true positive rate). Although the exact results are dependent on the details of the survey and the galaxy catalogs used, the method of identifying host galaxies we outline here can be applied to any transient survey.<br />Comment: 22 pages, 18 figures; Accepted by AJ, revised to incorporate referee comments

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1604.06138
Document Type :
Working Paper
Full Text :
https://doi.org/10.3847/0004-6256/152/6/154