4.7 Article

A machine-learning classifier for LOFAR radio galaxy cross-matching techniques

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stac1888

关键词

methods: statistical; galaxies: active; radio continuum: galaxies

资金

  1. UK Science and Technology Facilities Council (STFC) [ST/P006809/1]
  2. UK STFC [ST/R000972/1, ST/V000594/1, ST/V000624/1, ST/R504737/1]
  3. CAS-NWO programme - Netherlands Organisation for Scientific Research (NWO) [629.001.024]
  4. CNRS-INSU, France
  5. Observatoire de Paris, France
  6. BMBF, Germany
  7. MIWF-NRW, Germany
  8. MPG, Germany
  9. Science Foundation Ireland (SFI),Ireland
  10. Department of Business, Enterprise and Innovation (DBEI), Ireland
  11. NWO, the Netherlands
  12. The Science and Technology Facilities Council, UK
  13. Ministry of Science and Higher Education, Poland
  14. Universit 'e d'Orl'eans, France

向作者/读者索取更多资源

This paper uses machine learning to classify and associate radio sources, improving model performance, and the results have important practical applications.
New-generation radio telescopes like LOFAR are conducting extensive sky surveys, detecting millions of sources. To maximize the scientific value of these surveys, radio source components must be properly associated into physical sources before being cross-matched with their optical/infrared counterparts. In this paper, we use machine learning to identify those radio sources for which either source association is required or statistical cross-matching to optical/infrared catalogues is unreliable. We train a binary classifier using manual annotations from the LOFAR Two-metre Sky Survey (LoTSS). We find that, compared to a classification model based on just the radio source parameters, the addition of features of the nearest-neighbour radio sources, the potential optical host galaxy, and the radio source composition in terms of Gaussian components, all improve model performance. Our best model, a gradient boosting classifier, achieves an accuracy of 95 per cent on a balanced data set and 96 per cent on the whole (unbalanced) sample after optimizing the classification threshold. Unsurprisingly, the classifier performs best on small, unresolved radio sources, reaching almost 99 per cent accuracy for sources smaller than 15 arcsec, but still achieves 70 per cent accuracy on resolved sources. It flags 68 per cent more sources than required as needing visual inspection, but this is still fewer than the manually developed decision tree used in LoTSS, while also having a lower rate of wrongly accepted sources for statistical analysis. The results have an immediate practical application for cross-matching the next LoTSS data releases and can be generalized to other radio surveys.

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