The Astrophysical Journal Letters (Jan 2024)

tdescore: An Accurate Photometric Classifier for Tidal Disruption Events

  • Robert Stein,
  • Ashish Mahabal,
  • Simeon Reusch,
  • Matthew Graham,
  • Mansi M. Kasliwal,
  • Marek Kowalski,
  • Suvi Gezari,
  • Erica Hammerstein,
  • Szymon J. Nakoneczny,
  • Matt Nicholl,
  • Jesper Sollerman,
  • Sjoert van Velzen,
  • Yuhan Yao,
  • Russ R. Laher,
  • Ben Rusholme

DOI
https://doi.org/10.3847/2041-8213/ad3337
Journal volume & issue
Vol. 965, no. 2
p. L14

Abstract

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Optical surveys have become increasingly adept at identifying candidate tidal disruption events (TDEs) in large numbers, but classifying these generally requires extensive spectroscopic resources. Here we present tdescore , a simple binary photometric classifier that is trained using a systematic census of ∼3000 nuclear transients from the Zwicky Transient Facility (ZTF). The sample is highly imbalanced, with TDEs representing ∼2% of the total. tdescore is nonetheless able to reject non-TDEs with 99.6% accuracy, yielding a sample of probable TDEs with recall of 77.5% for a precision of 80.2%. tdescore is thus substantially better than any available TDE photometric classifier scheme in the literature, with performance not far from spectroscopy as a method for classifying ZTF nuclear transients, despite relying solely on ZTF data and multiwavelength catalog cross matching. In a novel extension, we use “Shapley additive explanations” to provide a human-readable justification for each individual tdescore classification, enabling users to understand and form opinions about the underlying classifier reasoning. tdescore can serve as a model for photometric identification of TDEs with time-domain surveys, such as the upcoming Rubin observatory.

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