4.7 Article

ArborZ: PHOTOMETRIC REDSHIFTS USING BOOSTED DECISION TREES

Journal

ASTROPHYSICAL JOURNAL
Volume 715, Issue 2, Pages 823-832

Publisher

IOP Publishing Ltd
DOI: 10.1088/0004-637X/715/2/823

Keywords

galaxies: distances and redshifts; galaxies: statistics; large-scale structure of universe; methods: data analysis; methods: statistical

Funding

  1. U.S. Department of Energy [DE-FG02-95ER40899, DE-AC02-76SF00515]
  2. National Science Foundation [AST 044327]
  3. Stanford University
  4. Alfred P. Sloan Foundation
  5. Participating Institutions
  6. National Science Foundation
  7. U.S. Department of Energy
  8. National Aeronautics and Space Administration
  9. Japanese Monbukagakusho
  10. Max Planck Society
  11. Higher Education Funding Council for England

Ask authors/readers for more resources

Precision photometric redshifts will be essential for extracting cosmological parameters from the next generation of wide-area imaging surveys. In this paper, we introduce a photometric redshift algorithm, ArborZ, based on the machine-learning technique of boosted decision trees. We study the algorithm using galaxies from the Sloan Digital Sky Survey (SDSS) and from mock catalogs intended to simulate both the SDSS and the upcoming Dark Energy Survey. We show that it improves upon the performance of existing algorithms. Moreover, the method naturally leads to the reconstruction of a full probability density function (PDF) for the photometric redshift of each galaxy, not merely a single best estimate and error, and also provides a photo-z quality figure of merit for each galaxy that can be used to reject outliers. We show that the stacked PDFs yield a more accurate reconstruction of the redshift distribution N(z). We discuss limitations of the current algorithm and ideas for future work.

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