Photometrically-Classified Superluminous Supernovae from the Pan-STARRS1 Medium Deep Survey: A Case Study for Science with Machine Learning-Based Classification
Brian Hsu, Griffin Hosseinzadeh, V. Ashley Villar, Edo Berger

TL;DR
This study demonstrates a photometric classification method for superluminous supernovae using Pan-STARRS1 data, enabling larger sample sizes for future surveys like LSST, and compares the properties of photometrically and spectroscopically classified samples.
Contribution
It introduces a photometric classification pipeline for SLSNe and validates it against spectroscopic samples, facilitating scalable studies with upcoming large surveys.
Findings
Photometric sample extends to slower spins and lower ejecta masses.
Photometric classifications are consistent with spectroscopic samples.
Method enables potential for large-scale SLSN studies in LSST era.
Abstract
With the upcoming Vera C.~Rubin Observatory Legacy Survey of Space and Time (LSST), it is expected that only of all transients will be classified spectroscopically. To conduct studies of rare transients, such as Type I superluminous supernovae (SLSNe), we must instead rely on photometric classification. In this vein, here we carry out a pilot study of SLSNe from the Pan-STARRS1 Medium-Deep Survey (PS1-MDS) classified photometrically with our SuperRAENN and Superphot algorithms. We first construct a sub-sample of the photometric sample using a list of simple selection metrics designed to minimize contamination and ensure sufficient data quality for modeling. We then fit the multi-band light curves with a magnetar spin-down model using the Modular Open-Source Fitter for Transients (MOSFiT). Comparing the magnetar engine and ejecta parameter distributions of the photometric…
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