Host Galaxy Identification for Supernova Surveys
Ravi R. Gupta, Steve Kuhlmann, Eve Kovacs, Harold Spinka, Richard, Kessler, Daniel A. Goldstein, Camille Liotine, Katarzyna Pomian, Chris B., D'Andrea, Mark Sullivan, Jorge Carretero, Francisco J. Castander, Robert C., Nichol, David A. Finley, John A. Fischer, Ryan J. Foley

TL;DR
This paper develops and tests an automated method for accurately matching supernovae to their host galaxies using simulations, real data, and machine learning, which is vital for cosmology and supernova science in large surveys.
Contribution
The paper introduces a fully automated host galaxy matching algorithm that achieves high accuracy and enhances it with machine learning, applicable to large transient surveys.
Findings
Host galaxy matching accuracy reaches 91% with the basic algorithm.
Machine learning improves matching purity to 97%.
The method is adaptable to various survey data and conditions.
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…
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