4.6 Article

Deriving the Stellar Labels of LAMOST Spectra with the Stellar LAbel Machine (SLAM)

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IOP Publishing Ltd
DOI: 10.3847/1538-4365/ab55ef

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资金

  1. National Key R&D Program of China [2019YFA0405501]
  2. National Natural Science Foundation of China (NSFC) [11835057]
  3. National Development and Reform Commission
  4. Alfred P. Sloan Foundation
  5. U.S. Department of Energy Office of Science
  6. Brazilian Participation Group
  7. Carnegie Institution for Science
  8. Carnegie Mellon University
  9. Chilean Participation Group
  10. French Participation Group
  11. Harvard-Smithsonian Center for Astrophysics
  12. Instituto de Astrofisica de Canarias
  13. Johns Hopkins University
  14. Kavli Institute for the Physics and Mathematics of the Universe (IPMU)/University of Tokyo
  15. Korean Participation Group
  16. Lawrence Berkeley National Laboratory
  17. Leibniz Institut fur Astrophysik Potsdam (AIP)
  18. Max-Planck-Institut fur Astronomie (MPIA Heidelberg)
  19. Max-Planck-Institut fur Astrophysik (MPA Garching)
  20. Max-Planck-Institut fur Extraterrestrische Physik (MPE)
  21. National Astronomical Observatories of China
  22. New Mexico State University
  23. New York University
  24. University of Notre Dame
  25. Observatario Nacional/MCTI
  26. Ohio State University
  27. Pennsylvania State University
  28. Shanghai Astronomical Observatory
  29. United Kingdom Participation Group
  30. Universidad Nacional Autonoma de Mexico
  31. University of Arizona
  32. University of Colorado Boulder
  33. University of Oxford
  34. University of Portsmouth
  35. University of Utah
  36. University of Virginia
  37. University of Washington
  38. University of Wisconsin
  39. Vanderbilt University
  40. Yale University

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The LAMOST survey has provided 9 million spectra in its Data Release 5 (DR5) at R similar to 1800. Extracting precise stellar labels is crucial for such a large sample. In this paper, we report the implementation of the Stellar LAbel Machine (SLAM), which is a data-driven method based on support vector regression (SVR), a robust nonlinear regression technique. Thanks to the capability to model highly nonlinear problems with SVR, SLAM can generally derive stellar labels over a wide range of spectral types. This gives it a unique capability compared to other popular data-driven methods. To illustrate this capability, we test the performance of SLAM on stars ranging from T-eff similar to 4000 to similar to 8000 K trained on LAMOST spectra and stellar labels. At g-band signal-to-noise ratio (S/N-g) higher than 100, the random uncertainties of T-eff, log g, and [Fe/H] are 50 K, 0.09 dex, and 0.07 dex, respectively. We then set up another SLAM model trained by APOGEE and LAMOST common stars to demonstrate its capability of dealing with high dimensional problems. The spectra are from LAMOST DR5 and the stellar labels of the training set are from APOGEE DR15, including T-eff, log g, [M/H], [alpha/M], [C/M], and [N/M]. The cross-validated scatters at

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