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Photometric Classification of 2315 Pan-STARRS1 Supernovae with Superphot

Authors :
Hosseinzadeh, Griffin
Dauphin, Frederick
Villar, V. Ashley
Berger, Edo
Jones, David O.
Challis, Peter
Chornock, Ryan
Drout, Maria R.
Foley, Ryan J.
Kirshner, Robert P.
Lunnan, Ragnhild
Margutti, Raffaella
Milisavljevic, Dan
Pan, Yen-Chen
Rest, Armin
Scolnic, Daniel M.
Magnier, Eugene
Metcalfe, Nigel
Wainscoat, Richard
Waters, Christopher
Publication Year :
2020

Abstract

The classification of supernovae (SNe) and its impact on our understanding of the explosion physics and progenitors have traditionally been based on the presence or absence of certain spectral features. However, current and upcoming wide-field time-domain surveys have increased the transient discovery rate far beyond our capacity to obtain even a single spectrum of each new event. We must therefore rely heavily on photometric classification, connecting SN light curves back to their spectroscopically defined classes. Here we present Superphot, an open-source Python implementation of the machine-learning classification algorithm of Villar et al., and apply it to 2315 previously unclassified transients from the Pan-STARRS1 Medium Deep Survey for which we obtained spectroscopic host-galaxy redshifts. Our classifier achieves an overall accuracy of 82%, with completenesses and purities of >80% for the best classes (SNe Ia and superluminous SNe). For the worst performing SN class (SNe Ibc), the completeness and purity fall to 37% and 21%, respectively. Our classifier provides 1257 newly classified SNe Ia, 521 SNe II, 298 SNe Ibc, 181 SNe IIn, and 58 SLSNe. These are among the largest uniformly observed samples of SNe available in the literature and will enable a wide range of statistical studies of each class.<br />Comment: Updated to match published version in ApJ. Companion paper to Villar et al. (2020). Full machine-readable tables available as ancillary files at right

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2008.04912
Document Type :
Working Paper
Full Text :
https://doi.org/10.3847/1538-4357/abc42b