4.7 Article

Tuning target selection algorithms to improve galaxy redshift estimates

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stw563

关键词

catalogues; surveys; galaxies: distances and redshifts

资金

  1. Transregional Collaborative Research Centre - The Dark Universe [TRR 33]
  2. DFG cluster of excellence 'Origin and Structure of the Universe'
  3. Alfred P. Sloan Foundation
  4. National Science Foundation
  5. US Department of Energy
  6. National Aeronautics and Space Administration
  7. Japanese Monbukagakusho
  8. Max Planck Society
  9. Higher Education Funding Council for England

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We showcase machine learning (ML) inspired target selection algorithms to determine which of all potential targets should be selected first for spectroscopic follow-up. Efficient target selection can improve the ML redshift uncertainties as calculated on an independent sample, while requiring less targets to be observed. We compare seven different ML targeting algorithms with the Sloan Digital Sky Survey (SDSS) target order, and with a random targeting algorithm. The ML inspired algorithms are constructed iteratively by estimating which of the remaining target galaxies will be most difficult for the ML methods to accurately estimate redshifts using the previously observed data. This is performed by predicting the expected redshift error and redshift offset (or bias) of all of the remaining target galaxies. We find that the predicted values of bias and error are accurate to better than 10-30 per cent of the true values, even with only limited training sample sizes. We construct a hypothetical follow-up survey and find that some of the ML targeting algorithms are able to obtain the same redshift predictive power with 2-3 times less observing time, as compared to that of the SDSS, or random, target selection algorithms. The reduction in the required follow-up resources could allow for a change to the follow-up strategy, for example by obtaining deeper spectroscopy, which could improve ML redshift estimates for deeper test data.

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