4.7 Article

Light-curve classification with recurrent neural networks for GOTO: dealing with imbalanced data

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stab1545

关键词

methods: data analysis; techniques: photometric; survey

资金

  1. Royal Society PhD studentship (Royal Society Enhancement Award) [RGF\EA\180234]
  2. University Research Fellowship (Royal Society) [URF UF150689]
  3. Science and Technology Facilities Council (STFC) [ST/R000964/1]
  4. Leverhulme Trust Research Project Grant
  5. European Research Council (ERC) under the European Union [715051]
  6. Science and Technology Facilities Council (STFC)
  7. Australian Research Council Centre of Excellence for Gravitational Wave Discovery (OzGrav) [CE170100004]
  8. UK Research and Innovation Fellowship [MR/T020784/1]
  9. Monash University
  10. Sheffield University
  11. University of Leicester
  12. Armagh Observatory Planetarium
  13. National Astronomical Research Institute of Thailand (NARIT)
  14. University of Turku
  15. University of Manchester
  16. University of Portsmouth
  17. Instituto de Astrofisica de Canarias (IAC)
  18. Monash Warwick Alliance
  19. Warwick University

向作者/读者索取更多资源

The study introduces an RNN classifier for real-time classification of observed objects, capable of handling photometric time-series data and contextual information, and using a focal loss function to address imbalanced data. The classifier achieves an AUC score of 0.972 for classifying variable stars, supernovae, and active galactic nuclei, while also investigating the role of contextual information in reliable object classification.
The advent of wide-field sky surveys has led to the growth of transient and variable source discoveries. The data deluge produced by these surveys has necessitated the use of machine learning (ML) and deep learning (DL) algorithms to sift through the vast incoming data stream. A problem that arises in real-world applications of learning algorithms for classification is imbalanced data, where a class of objects within the data is underrepresented, leading to a bias for overrepresented classes in the ML and DL classifiers. We present a recurrent neural network (RNN) classifier that takes in photometric time-series data and additional contextual information (such as distance to nearby galaxies and on-sky position) to produce real-time classification of objects observed by the Gravitational-wave Optical Transient Observer, and use an algorithm-level approach for handling imbalance with a focal loss function. The classifier is able to achieve an Area Under the Curve (AUC) score of 0.972 when using all available photometric observations to classify variable stars, supernovae, and active galactic nuclei. The RNN architecture allows us to classify incomplete light curves, and measure how performance improves as more observations are included. We also investigate the role that contextual information plays in producing reliable object classification.

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