English

redMaGiC: Selecting Luminous Red Galaxies from the DES Science Verification Data

Instrumentation and Methods for Astrophysics 2016-06-08 v1 Cosmology and Nongalactic Astrophysics Astrophysics of Galaxies

Abstract

We introduce redMaGiC, an automated algorithm for selecting Luminous Red Galaxies (LRGs). The algorithm was specifically developed to minimize photometric redshift uncertainties in photometric large-scale structure studies. redMaGiC achieves this by self-training the color-cuts necessary to produce a luminosity-thresholded LRG sample of constant comoving density. We demonstrate that redMaGiC photozs are very nearly as accurate as the best machine-learning based methods, yet they require minimal spectroscopic training, do not suffer from extrapolation biases, and are very nearly Gaussian. We apply our algorithm to Dark Energy Survey (DES) Science Verification (SV) data to produce a redMaGiC catalog sampling the redshift range z[0.2,0.8]z\in[0.2,0.8]. Our fiducial sample has a comoving space density of 103 (h1Mpc)310^{-3}\ (h^{-1} Mpc)^{-3}, and a median photoz bias (zspeczphotoz_{spec}-z_{photo}) and scatter (σz/(1+z))(\sigma_z/(1+z)) of 0.005 and 0.017 respectively. The corresponding 5σ5\sigma outlier fraction is 1.4%. We also test our algorithm with Sloan Digital Sky Survey (SDSS) Data Release 8 (DR8) and Stripe 82 data, and discuss how spectroscopic training can be used to control photoz biases at the 0.1% level.

Keywords

Cite

@article{arxiv.1507.05460,
  title  = {redMaGiC: Selecting Luminous Red Galaxies from the DES Science Verification Data},
  author = {E. Rozo and E. S. Rykoff and A. Abate and C. Bonnett and M. Crocce and C. Davis and B. Hoyle and B. Leistedt and H. V. Peiris and R. H. Wechsler and T. Abbott and F. B. Abdalla and M. Banerji and A. H. Bauer and A. Benoit-Lévy and G. M. Bernstein and E. Bertin and D. Brooks and E. Buckley-Geer and D. L. Burke and D. Capozzi and A. Carnero Rosell and D. Carollo and M. Carrasco Kind and J. Carretero and F. J. Castander and M. J. Childress and C. E. Cunha and C. B. D'Andrea and T. Davis and D. L. DePoy and S. Desai and H. T. Diehl and J. P. Dietrich and P. Doel and T. F. Eifler and A. E. Evrard and A. Fausti Neto and B. Flaugher and P. Fosalba and J. Frieman and E. Gaztanaga and D. W. Gerdes and K. Glazebrook and D. Gruen and R. A. Gruendl and K. Honscheid and D. J. James and M. Jarvis and A. G. Kim and K. Kuehn and N. Kuropatkin and O. Lahav and C. Lidman and M. Lima and M. A. G. Maia and M. March and P. Martini and P. Melchior and C. J. Miller and R. Miquel and J. J. Mohr and R. C. Nichol and B. Nord and C. R. O'Neill and R. Ogando and A. A. Plazas and A. K. Romer and A. Roodman and M. Sako and E. Sanchez and B. Santiago and M. Schubnell and I. Sevilla-Noarbe and R. C. Smith and M. Soares-Santos and F. Sobreira and E. Suchyta and M. E. C. Swanson and J. Thaler and D. Thomas and S. Uddin and V. Vikram and A. R. Walker and W. Wester and Y. Zhang and L. N. da Costa},
  journal= {arXiv preprint arXiv:1507.05460},
  year   = {2016}
}

Comments

comments welcome

R2 v1 2026-06-22T10:14:57.343Z