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SuperRAENN: A Semisupervised Supernova Photometric Classification Pipeline Trained on Pan-STARRS1 Medium-Deep Survey Supernovae

Publication ,  Journal Article
Villar, VA; Hosseinzadeh, G; Berger, E; Ntampaka, M; Jones, DO; Challis, P; Chornock, R; Drout, MR; Foley, RJ; Kirshner, RP; Lunnan, R ...
Published in: The Astrophysical Journal
December 1, 2020

Automated classification of supernovae (SNe) based on optical photometric light-curve information is essential in the upcoming era of wide-field time domain surveys, such as the Legacy Survey of Space and Time (LSST) conducted by the Rubin Observatory. Photometric classification can enable real-time identification of interesting events for extended multiwavelength follow-up, as well as archival population studies. Here we present the complete sample of 5243 “SN-like” light curves (in ) from the Pan-STARRS1 Medium-Deep Survey (PS1-MDS). The PS1-MDS is similar to the planned LSST Wide-Fast-Deep survey in terms of cadence, filters, and depth, making this a useful training set for the community. Using this data set, we train a novel semisupervised machine learning algorithm to photometrically classify 2315 new SN-like light curves with host galaxy spectroscopic redshifts. Our algorithm consists of an RF supervised classification step and a novel unsupervised step in which we introduce a recurrent autoencoder neural network (RAENN). Our final pipeline, dubbed , has an accuracy of 87% across five SN classes (Type Ia, Ibc, II, IIn, SLSN-I) and macro-averaged purity and completeness of 66% and 69%, respectively. We find the highest accuracy rates for SNe Ia and SLSNe and the lowest for SNe Ibc. Our complete spectroscopically and photometrically classified samples break down into 62.0% Type Ia (1839 objects), 19.8% Type II (553 objects), 4.8% Type IIn (136 objects), 11.7% Type Ibc (291 objects), and 1.6% Type I SLSNe (54 objects).

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Published In

The Astrophysical Journal

DOI

EISSN

1538-4357

ISSN

0004-637X

Publication Date

December 1, 2020

Volume

905

Issue

2

Start / End Page

94 / 94

Publisher

American Astronomical Society

Related Subject Headings

  • Astronomy & Astrophysics
  • 5109 Space sciences
  • 5107 Particle and high energy physics
  • 5101 Astronomical sciences
  • 0306 Physical Chemistry (incl. Structural)
  • 0202 Atomic, Molecular, Nuclear, Particle and Plasma Physics
  • 0201 Astronomical and Space Sciences
 

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Villar, V. A., Hosseinzadeh, G., Berger, E., Ntampaka, M., Jones, D. O., Challis, P., … Waters, C. (2020). SuperRAENN: A Semisupervised Supernova Photometric Classification Pipeline Trained on Pan-STARRS1 Medium-Deep Survey Supernovae. The Astrophysical Journal, 905(2), 94–94. https://doi.org/10.3847/1538-4357/abc6fd
Villar, V Ashley, Griffin Hosseinzadeh, Edo Berger, Michelle Ntampaka, David O. Jones, Peter Challis, Ryan Chornock, et al. “SuperRAENN: A Semisupervised Supernova Photometric Classification Pipeline Trained on Pan-STARRS1 Medium-Deep Survey Supernovae.” The Astrophysical Journal 905, no. 2 (December 1, 2020): 94–94. https://doi.org/10.3847/1538-4357/abc6fd.
Villar VA, Hosseinzadeh G, Berger E, Ntampaka M, Jones DO, Challis P, et al. SuperRAENN: A Semisupervised Supernova Photometric Classification Pipeline Trained on Pan-STARRS1 Medium-Deep Survey Supernovae. The Astrophysical Journal. 2020 Dec 1;905(2):94–94.
Villar, V. Ashley, et al. “SuperRAENN: A Semisupervised Supernova Photometric Classification Pipeline Trained on Pan-STARRS1 Medium-Deep Survey Supernovae.” The Astrophysical Journal, vol. 905, no. 2, American Astronomical Society, Dec. 2020, pp. 94–94. Crossref, doi:10.3847/1538-4357/abc6fd.
Villar VA, Hosseinzadeh G, Berger E, Ntampaka M, Jones DO, Challis P, Chornock R, Drout MR, Foley RJ, Kirshner RP, Lunnan R, Margutti R, Milisavljevic D, Sanders N, Pan Y-C, Rest A, Scolnic DM, Magnier E, Metcalfe N, Wainscoat R, Waters C. SuperRAENN: A Semisupervised Supernova Photometric Classification Pipeline Trained on Pan-STARRS1 Medium-Deep Survey Supernovae. The Astrophysical Journal. American Astronomical Society; 2020 Dec 1;905(2):94–94.
Journal cover image

Published In

The Astrophysical Journal

DOI

EISSN

1538-4357

ISSN

0004-637X

Publication Date

December 1, 2020

Volume

905

Issue

2

Start / End Page

94 / 94

Publisher

American Astronomical Society

Related Subject Headings

  • Astronomy & Astrophysics
  • 5109 Space sciences
  • 5107 Particle and high energy physics
  • 5101 Astronomical sciences
  • 0306 Physical Chemistry (incl. Structural)
  • 0202 Atomic, Molecular, Nuclear, Particle and Plasma Physics
  • 0201 Astronomical and Space Sciences