DES science portal: Computing photometric redshifts

Eric Suchyta | Klaus Honscheid | David James | Iftach Sadeh | Ramon Miquel | David Brooks | Paulo Pellegrini | Michel Aguena | Matias Carrasco Kind | Karl Glazebrook | Huan Lin | David Gerdes | Gregory Tarle | James Annis | August Evrard | Francisco Castander | Vic Scarpine | Kyler Kuehn | Ofer Lahav | Riccardo Campisano | Juan de Vicente | Daniela Carollo | Pablo Fosalba | Filipe Abdalla | Robert Gruendl | Alistair Walker | Eusebio Sanchez | Samuel Hinton | Geraint Lewis | Ben Hoyle | Antonella Palmese | Ignacio Sevilla | Molly Swanson | Josh Frieman | Rafe Schindler | Chris D'Andrea | Anais Moller | Marcio Maia | Peter Melchior | Juan Garcia-Bellido | Edward Macaulay | N. E. Sommer | Josh Calcino | Sahar Allam | Nikolay Kuropatkin | Julia Gschwend | Aurelio Carnero Rosell | Ricardo Ogando | Angelo Fausti Neto | Luiz da Costa | Marcos Lima | Cristiano Singulani | Carlos Adean | Christophe Benoist | Tamara Davis | Will Hartley | Tim Abbot | Jacobo Asorey | Shantanu Desai | Gaston Gutierrez | Devon Hollowood | Janie Hoormann | Chris Lidman | Jeniffer Marshall | Andr'es Plazas | Basilio Santiago | Mathew Smith | Flavia Sobreira | Natalia Eir'e Sommer | Brad Tucker | Douglas Tucker | Syed Uddin | D. Gerdes | J. Frieman | O. Lahav | F. Castander | P. Fosalba | F. Abdalla | C. Benoist | J. García-Bellido | L. Costa | K. Honscheid | M. Maia | R. Ogando | M. Swanson | Peter Melchior | D. Tucker | Huan Lin | M. Kind | R. Gruendl | A. Palmese | W. Hartley | J. Annis | S. Allam | J. DeVicente | J. Gschwend | I. Sevilla-Noarbe | T. Abbott | C. D'Andrea | S. Desai | A. Evrard | G. Gutiérrez | D. Hollowood | B. Hoyle | D. James | K. Kuehn | N. Kuropatkin | R. Miquel | A. Plazas | V. Scarpine | R. Schindler | E. Suchyta | G. Tarlé | A. Walker | P. Pellegrini | Mathew Smith | E. Sánchez | T. Davis | I. Sadeh | G. Lewis | M. Aguena | A. Möller | K. Glazebrook | C. Lidman | B. Tucker | J. Asorey | D. Carollo | S. Hinton | J. Hoormann | E. Macaulay | S. Uddin | M. Lima | J. Calcino | M. C. Kind | D. Brooks | A. Rossel | J. Marshall | B. Santiago | A. F. Neto | R. Campisano | C. Singulani | C. Adean | M. Swanson | E. MacAulay

[1]  J. Frieman,et al.  The Dark Energy Survey , 2020 .

[2]  J.Lee,et al.  THE DARK ENERGY CAMERA , 2004, The Dark Energy Survey.

[3]  M. Sullivan,et al.  The Dark Energy Survey: Data Release 1 , 2018, The Astrophysical Journal Supplement Series.

[4]  B. Yanny,et al.  The Dark Energy Survey Image Processing Pipeline , 2018, 1801.03177.

[5]  Michael Schubnell,et al.  DES science portal: Creating science-ready catalogs , 2017, Astron. Comput..

[6]  N. E. Sommer,et al.  Dark Energy Survey Year 1 Results: redshift distributions of the weak-lensing source galaxies , 2017, Monthly Notices of the Royal Astronomical Society.

[7]  B. Yanny,et al.  Dark Energy Survey Year 1 Results: The Photometric Data Set for Cosmology , 2017, 1708.01531.

[8]  D. A. García-Hernández,et al.  University of Birmingham The Fourteenth Data Release of the Sloan Digital Sky Survey: , 2017 .

[9]  R. Nichol,et al.  Dark Energy Survey Year 1 Results: Cross-Correlation Redshifts in the DES -- Calibration of the Weak Lensing Source Redshift Distributions , 2017, 1710.02517.

[10]  N. E. Sommer,et al.  Dark Energy Survey Year 1 results: Cross-correlation redshifts - methods and systematics characterization , 2017, 1709.00992.

[11]  Carnegie,et al.  The SAGA Survey. I. Satellite Galaxy Populations around Eight Milky Way Analogs , 2017, 1705.06743.

[12]  Daniel Masters,et al.  The Complete Calibration of the Color–Redshift Relation (C3R2) Survey: Survey Overview and Data Release 1 , 2017, 1704.06665.

[13]  N. E. Sommer,et al.  OzDES multifibre spectroscopy for the Dark Energy Survey: 3-yr results and first data release , 2017, 1708.04526.

[14]  S.Paltani,et al.  The VIMOS Ultra Deep Survey first data release: Spectra and spectroscopic redshifts of 698 objects up to zspec ~ 6 in CANDELS , 2016, 1602.01842.

[15]  Adrian T. Lee,et al.  SPT-GMOS: A GEMINI/GMOS-SOUTH SPECTROSCOPIC SURVEY OF GALAXY CLUSTERS IN THE SPT-SZ SURVEY , 2016, 1609.05211.

[16]  C. Heymans,et al.  The 2-degree Field Lensing Survey: design and clustering measurements , 2016, 1608.02668.

[17]  L. Kewley,et al.  ZFIRE: A KECK/MOSFIRE SPECTROSCOPIC SURVEY OF GALAXIES IN RICH ENVIRONMENTS AT z ∼ 2 , 2016, 1607.00013.

[18]  R. Nichol,et al.  The Dark Energy Survey: more than dark energy - an overview , 2016, 1601.00329.

[19]  F. Menanteau,et al.  The XXL Survey XIV. AAOmega Redshifts for the Southern XXL Field , 2015, Publications of the Astronomical Society of Australia.

[20]  J. Vicente,et al.  DNF – Galaxy photometric redshift by Directional Neighbourhood Fitting , 2015, 1511.07623.

[21]  R. C. Smith,et al.  Crowdsourcing quality control for Dark Energy Survey images , 2015, Astron. Comput..

[22]  D. Gerdes,et al.  SDSS-IV eBOSS emission-line galaxy pilot survey , 2015, 1509.05045.

[23]  C. B. D'Andrea,et al.  Redshift distributions of galaxies in the Dark Energy Survey Science Verification shear catalogue and implications for weak lensing , 2015, Physical Review D.

[24]  C. B. D'Andrea,et al.  Cosmology from cosmic shear with Dark Energy Survey science verification data , 2015, 1507.05552.

[25]  J. E. Carlstrom,et al.  CMB lensing tomography with the DES Science Verification galaxies , 2015, Monthly Notices of the Royal Astronomical Society.

[26]  Iftach Sadeh,et al.  ANNz2: Photometric Redshift and Probability Distribution Function Estimation using Machine Learning , 2015, 1507.00490.

[27]  E. Morganson The Dark Energy Survey Pipeline , 2016 .

[28]  et al.,et al.  Jupyter Notebooks - a publishing format for reproducible computational workflows , 2016, ELPUB.

[29]  R. Nichol,et al.  OBSERVATION AND CONFIRMATION OF SIX STRONG-LENSING SYSTEMS IN THE DARK ENERGY SURVEY SCIENCE VERIFICATION DATA , 2015, 1512.03062.

[30]  Mattia Fumagalli,et al.  THE 3D-HST SURVEY: HUBBLE SPACE TELESCOPE WFC3/G141 GRISM SPECTRA, REDSHIFTS, AND EMISSION LINE MEASUREMENTS FOR ∼100,000 GALAXIES , 2015, 1510.02106.

[31]  A. Fontana,et al.  THE GRISM LENS-AMPLIFIED SURVEY FROM SPACE (GLASS). I. SURVEY OVERVIEW AND FIRST DATA RELEASE , 2015, 1509.00475.

[32]  M. Sullivan,et al.  THE DIFFERENCE IMAGING PIPELINE FOR THE TRANSIENT SEARCH IN THE DARK ENERGY SURVEY , 2015, 1507.05137.

[33]  R. Nichol,et al.  OzDES multifibre spectroscopy for the Dark Energy Survey: First-year operation and results , 2015, 1504.03039.

[34]  J. Weller,et al.  Data augmentation for machine learning redshifts applied to Sloan Digital Sky Survey galaxies , 2015, 1501.06759.

[35]  G. Longo,et al.  Photometric redshift estimation based on data mining with PhotoRApToR , 2015, Experimental Astronomy.

[36]  Hilo,et al.  THE ELEVENTH AND TWELFTH DATA RELEASES OF THE SLOAN DIGITAL SKY SURVEY: FINAL DATA FROM SDSS-III , 2015, 1501.00963.

[37]  S. J. Lilly,et al.  THE FMOS-COSMOS SURVEY OF STAR-FORMING GALAXIES AT z ∼ 1.6. III. SURVEY DESIGN, PERFORMANCE, AND SAMPLE CHARACTERISTICS , 2014, 1409.0447.

[38]  E. Bertin,et al.  MODELING THE TRANSFER FUNCTION FOR THE DARK ENERGY SURVEY , 2014, 1411.0032.

[39]  B. Yanny,et al.  The Dark Energy Survey and operations: Year 1 , 2014, Astronomical Telescopes and Instrumentation.

[40]  A. Roodman,et al.  The DECam DAQ System: lessons learned after one year of operations , 2014, Astronomical Telescopes and Instrumentation.

[41]  Sergey E. Koposov,et al.  Combining Dark Energy Survey Science Verification data with near-infrared data from the ESO VISTA Hemisphere Survey , 2014, 1407.3801.

[42]  M. Salvato,et al.  Large-scale clustering measurements with photometric redshifts: comparing the dark matter haloes of X-ray AGN, star-forming and passive galaxies at z ≈ 1 , 2014, 1407.1863.

[43]  Mauro Garofalo,et al.  DAMEWARE: A Web Cyberinfrastructure for Astrophysical Data Mining , 2014, 1406.3538.

[44]  R. Nichol,et al.  Photometric redshift analysis in the Dark Energy Survey Science Verification data , 2014, 1406.4407.

[45]  Adam D. Myers,et al.  THE SLOAN DIGITAL SKY SURVEY STRIPE 82 IMAGING DATA: DEPTH-OPTIMIZED CO-ADDS OVER 300 deg2 IN FIVE FILTERS , 2014, 1405.7382.

[46]  Robert J. Brunner,et al.  MLZ: Machine Learning for photo-Z , 2014 .

[47]  D. A. García-Hernández,et al.  THE TENTH DATA RELEASE OF THE SLOAN DIGITAL SKY SURVEY: FIRST SPECTROSCOPIC DATA FROM THE SDSS-III APACHE POINT OBSERVATORY GALACTIC EVOLUTION EXPERIMENT , 2013, 1307.7735.

[48]  Huan Lin,et al.  Spectroscopic failures in photometric redshift calibration: cosmological biases and survey requirements , 2012, 1207.3347.

[49]  A. Pastorello,et al.  SYSTEMATIC UNCERTAINTIES ASSOCIATED WITH THE COSMOLOGICAL ANALYSIS OF THE FIRST PAN-STARRS1 TYPE Ia SUPERNOVA SAMPLE , 2013, 1310.3824.

[50]  A. Pastorello,et al.  COSMOLOGICAL CONSTRAINTS FROM MEASUREMENTS OF TYPE Ia SUPERNOVAE DISCOVERED DURING THE FIRST 1.5 yr OF THE Pan-STARRS1 SURVEY , 2013, 1310.3828.

[51]  G. Zamorani,et al.  The VIMOS Public Extragalactic Survey (VIPERS) - First Data Release of 57 204 spectroscopic measurements , 2013, 1310.1008.

[52]  Farhan Feroz,et al.  SKYNET: an efficient and robust neural network training tool for machine learning in astronomy , 2013, ArXiv.

[53]  R. J. Brunner,et al.  TPZ: photometric redshift PDFs and ancillary information by using prediction trees and random forests , 2013, 1303.7269.

[54]  M. Blanton,et al.  THE PRISM MULTI-OBJECT SURVEY (PRIMUS). II. DATA REDUCTION AND REDSHIFT FITTING , 2013, 1303.2672.

[55]  I. Hook,et al.  An Efficient Approach to Obtaining Large Numbers of Distant Supernova Host Galaxy Redshifts , 2012, Publications of the Astronomical Society of Australia.

[56]  Scott Croom,et al.  The WiggleZ Dark Energy Survey: Final data release and cosmological results , 2012, 1210.2130.

[57]  D. J. Saikia,et al.  The Australia Telescope Large Area Survey: Spectroscopic Catalogue and Radio Luminosity Functions , 2012, 1208.2722.

[58]  Emmanuel Bertin,et al.  The Dark Energy Survey data processing and calibration system , 2012, Other Conferences.

[59]  J. Mohr,et al.  THE BLANCO COSMOLOGY SURVEY: DATA ACQUISITION, PROCESSING, CALIBRATION, QUALITY DIAGNOSTICS, AND DATA RELEASE , 2012, 1204.1210.

[60]  H. Hoekstra,et al.  THE GEMINI CLUSTER ASTROPHYSICS SPECTROSCOPIC SURVEY (GCLASS): THE ROLE OF ENVIRONMENT AND SELF-REGULATION IN GALAXY EVOLUTION AT z ∼ 1 , 2011, 1112.3655.

[61]  B. Weiner,et al.  The Arizona CDFS Environment Survey (ACES): A Magellan/IMACS Spectroscopic Survey of the Chandra Deep Field-South† , 2011, 1112.0312.

[62]  I. Hook,et al.  Photometric selection of Type Ia supernovae in the Supernova Legacy Survey , 2011, 1109.0948.

[63]  É. Bertin Automated Morphometry with SExtractor and PSFEx , 2011 .

[64]  M. Blanton,et al.  THE PRISM MULTI-OBJECT SURVEY (PRIMUS). I. SURVEY OVERVIEW AND CHARACTERISTICS , 2010, 1011.4307.

[65]  S. Bamford,et al.  Galaxy and Mass Assembly (GAMA): survey diagnostics and core data release , 2010, 1009.0614.

[66]  Adrian T. Lee,et al.  The 10 Meter South Pole Telescope , 2009, 0907.4445.

[67]  D. Gerdes,et al.  PHAT: PHoto-z Accuracy Testing , 2010, 1008.0658.

[68]  Larry Denneau,et al.  The Pan-STARRS wide-field optical/NIR imaging survey , 2010, Astronomical Telescopes + Instrumentation.

[69]  Hairong Kuang,et al.  The Hadoop Distributed File System , 2010, 2010 IEEE 26th Symposium on Mass Storage Systems and Technologies (MSST).

[70]  Andrew P. Hearin,et al.  A GENERAL STUDY OF THE INFLUENCE OF CATASTROPHIC PHOTOMETRIC REDSHIFT ERRORS ON COSMOLOGY WITH COSMIC SHEAR TOMOGRAPHY , 2010, 1002.3383.

[71]  Jiangang Hao,et al.  ArborZ: PHOTOMETRIC REDSHIFTS USING BOOSTED DECISION TREES , 2009, The Astrophysical Journal.

[72]  P. Petitjean,et al.  Optical identification of XMM sources in the Canada–France–Hawaii Telescope Legacy Survey , 2010 .

[73]  B. Garilli,et al.  THE zCOSMOS 10k-BRIGHT SPECTROSCOPIC SAMPLE , 2009 .

[74]  Bangalore,et al.  Optical identification of XMM sources in the CFHTLS , 2009, 0909.0464.

[75]  O. Lahav,et al.  The 6dF Galaxy Survey: final redshift release (DR3) and southern large-scale structures , 2009, 0903.5451.

[76]  C. Stubbs,et al.  STELLAR LOCUS REGRESSION: ACCURATE COLOR CALIBRATION AND THE REAL-TIME DETERMINATION OF GALAXY CLUSTER PHOTOMETRIC REDSHIFTS , 2009, 0903.5302.

[77]  K. Abazajian,et al.  THE SEVENTH DATA RELEASE OF THE SLOAN DIGITAL SKY SURVEY , 2008, 0812.0649.

[78]  F. Castander,et al.  The ALHAMBRA Project: A large area multi medium-band optical and NIR photometric survey , 2008, 0806.3021.

[79]  Jeffrey A. Newman,et al.  Calibrating Redshift Distributions beyond Spectroscopic Limits with Cross-Correlations , 2008, 0805.1409.

[80]  A. Mazure,et al.  The Vimos VLT deep survey Global properties of 20 000 galaxies in the IAB < 22.5 WIDE survey , 2008, 0804.4568.

[81]  Huan Lin,et al.  Estimating the redshift distribution of photometric galaxy samples – II. Applications and tests of a new method , 2008, 0801.3822.

[82]  G. Bernstein,et al.  Size of Spectroscopic Calibration Samples for Cosmic Shear Photometric Redshifts , 2007, 0712.1562.

[83]  Sanjay Ghemawat,et al.  MapReduce: simplified data processing on large clusters , 2008, CACM.

[84]  Markus Lupp,et al.  Extensible Markup Language , 2008, Encyclopedia of GIS.

[85]  M. Lima,et al.  Photometric Redshift Requirements for Self-Calibration of Cluster Dark Energy Studies , 2007, 0709.2871.

[86]  Brian E. Granger,et al.  IPython: A System for Interactive Scientific Computing , 2007, Computing in Science & Engineering.

[87]  D. Calzetti,et al.  COSMOS: Hubble Space Telescope Observations , 2006, astro-ph/0612306.

[88]  E. L. Wright,et al.  The All-Wavelength Extended Groth Strip International Survey (AEGIS) Data Sets , 2006, astro-ph/0607355.

[89]  M. Kenward,et al.  An Introduction to the Bootstrap , 2007 .

[90]  Maurice Herlihy,et al.  The art of multiprocessor programming , 2020, PODC '06.

[91]  Sergey E. Koposov,et al.  Q3C, Quad Tree Cube -- The new Sky-indexing Concept for Huge Astronomical Catalogues and its Realization for Main Astronomical Queries (Cone Search and Xmatch) in Open Source Database PostgreSQL , 2006 .

[92]  Mark Taylor,et al.  STILTS - A Package for Command-Line Processing of Tabular Data , 2006 .

[93]  B. Garilli,et al.  Accurate photometric redshifts for the CFHT legacy survey calibrated using the VIMOS VLT deep survey , 2006, astro-ph/0603217.

[94]  Carlos E. C. J. Gabriel,et al.  Astronomical Data Analysis Software and Systems Xv , 2022 .

[95]  D. Huterer,et al.  Effects of Photometric Redshift Uncertainties on Weak-Lensing Tomography , 2005, astro-ph/0506614.

[96]  B. Flaugher The Dark Energy Survey , 2005 .

[97]  B. Garilli,et al.  The VIMOS VLT deep survey - First epoch VVDS-deep survey: 11 564 spectra with 17.5 $\leq$ I$_\textit{\textbf{\small AB}}$ $\leq$ 24, and the redshift distribution over 0 $\leq$ z $\leq$ 5 , 2004, astro-ph/0409133.

[98]  B. Garilli,et al.  The VIMOS VLT Deep Survey. Public release of 1599 redshifts to I AB ≤24 across the Chandra Deep Field South , 2004, astro-ph/0403628.

[99]  Tamara Broderick,et al.  Redshift Accuracy Requirements for Future Supernova and Number Count Surveys , 2004, astro-ph/0402002.

[100]  O. Lahav,et al.  ANNz: Estimating Photometric Redshifts Using Artificial Neural Networks , 2003, astro-ph/0311058.

[101]  Marc Davis,et al.  Science Objectives and Early Results of the DEEP2 Redshift Survey , 2002, SPIE Astronomical Telescopes + Instrumentation.

[102]  Andrew J. Hutton,et al.  Lustre: Building a File System for 1,000-node Clusters , 2003 .

[103]  L. Moscardini,et al.  Measuring the Redshift Evolution of Clustering: the Hubble Deep Field South , 2001, astro-ph/0109453.

[104]  S.Cole,et al.  The 2dF Galaxy Redshift Survey: spectra and redshifts , 2001, astro-ph/0106498.

[105]  A. Szalay,et al.  An Optimal Multihump Filter for Photometric Redshifts , 2001, astro-ph/0106073.

[106]  A. Mazure,et al.  The VIMOS VLT deep survey , 2001, 0903.0271.

[107]  N. Benı́tez Bayesian Photometric Redshift Estimation , 1998, astro-ph/9811189.

[108]  D. Schlegel,et al.  Maps of Dust Infrared Emission for Use in Estimation of Reddening and Cosmic Microwave Background Radiation Foregrounds , 1998 .

[109]  C. M. Sperberg-McQueen,et al.  Extensible Markup Language (XML) , 1997, World Wide Web J..

[110]  E. Bertin,et al.  SExtractor: Software for source extraction , 1996 .

[111]  S. Shectman,et al.  The Las Campanas Redshift Survey , 1996, astro-ph/9604167.

[112]  R. Tibshirani,et al.  An Introduction to the Bootstrap , 1995 .

[113]  Stephen L. Burbeck,et al.  Applications programming in smalltalk-80: how to use model-view-controller (mvc) , 1987 .

[114]  Dan Walsh,et al.  Design and implementation of the Sun network filesystem , 1985, USENIX Conference Proceedings.

[115]  L. Prévot,et al.  The typical interstellar extinction in the Small Magellanic Cloud. , 1984 .