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arxiv: 2605.18218 · v1 · pith:W3V6TSY4new · submitted 2026-05-18 · 🌌 astro-ph.IM · astro-ph.CO

Photometric classification of quasars from DES and photo-z estimation with Machine Learning

Pith reviewed 2026-05-20 00:20 UTC · model grok-4.3

classification 🌌 astro-ph.IM astro-ph.CO
keywords quasar classificationphotometric redshiftsmachine learningDark Energy SurveyKNNcosmologylarge-scale structure
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The pith

KNN on DES photometry classifies quasars at 0.99 precision and builds an 872k-object photo-z catalog

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

The paper cross-matches DES DR2 photometry with SDSS DR16 spectroscopy to assemble a training set of 168,738 point-like objects. A K-nearest neighbors algorithm applied to PSF magnitudes in the g, r, i, and z bands separates quasars from stars and galaxies at 0.99 precision and 0.77 recall. A hybrid machine-learning pipeline that combines boosted decision trees with a decision-tree regressor then estimates photometric redshifts, yielding a sample of 872,372 objects. After cleaning, 675,683 objects remain suitable for large-scale structure work at redshifts below 3, while the full catalog stays reliable for cosmological use near redshift 4.

Core claim

Cross-matching DES DR2 with SDSS DR16 produces a training set of 168,738 objects on which a KNN classifier using four-band PSF magnitudes separates quasars from contaminants at 0.99 precision with 0.77 recall. A hybrid ML approach combining boosted decision trees and a decision tree regressor then estimates photometric redshifts across 872,372 photometric objects, with 675,683 cleaned objects reliable for cosmological applications in the range 0 < z < 3 and the full set useful at z ≈ 4.

What carries the argument

K-Nearest Neighbors classifier on PSF magnitudes in the g, r, i, z bands for quasar selection, followed by a hybrid boosted decision tree plus decision tree regressor pipeline for photometric redshift estimation

Load-bearing premise

The cross-matched training sample of 168,738 objects is representative of the full DES photometric population without significant selection biases or distribution shifts.

What would settle it

Spectroscopic follow-up on a random subset of the photometrically classified objects to verify whether the reported 0.99 precision and 0.77 recall are reproduced on objects outside the training cross-match.

read the original abstract

This paper presents a comprehensive study of quasar photometric classification and redshift estimation using machine learning techniques. We cross-matched photometric data from the Dark Energy Survey Data Release 2 (DES DR2) with spectroscopic classifications from the Sloan Digital Sky Survey Data Release 16 (SDSS DR16), yielding an initial sample of 168,738 point-like objects. Using a K-Nearest Neighbors (KNN) algorithm with PSF magnitudes in the $g$, $r$, $i$, and $z$ bands, we achieved high-precision quasar/galaxy classification against stellar contaminants, reaching a recall of 0.77 at 0.99 precision. Photometric redshifts were subsequently estimated using a hybrid machine learning approach combining a Boosted Decision Tree from ANNz and a Decision Tree Regressor from scikit-learn. The resulting catalog spans redshifts from $z \approx 0.5$ to $z > 3$, with a distinct population recovered at $z \approx 4$. A stacked outlier classifier was developed to mitigate catastrophic redshift errors. The full photometric redshift sample contains 872,372 objects and remains reliable for cosmological applications at $z \approx 4$. The cleaned catalog contains 675,683 objects and is suitable for large-scale structure studies in the range $0 < z < 3$. This robustly characterized quasar catalog provides a valuable resource for future cosmological investigations.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

2 major / 2 minor

Summary. The paper cross-matches DES DR2 photometry with SDSS DR16 spectroscopy to obtain 168,738 point-like objects and applies a KNN classifier on PSF g,r,i,z magnitudes to separate quasars from galaxies and stars, reporting a recall of 0.77 at 0.99 precision. A hybrid ML pipeline (ANNz boosted decision tree plus scikit-learn decision tree regressor) then produces photometric redshifts, yielding a catalog of 872,372 objects asserted to be reliable for cosmology at z≈4 and a cleaned subset of 675,683 objects for large-scale structure studies between 0<z<3.

Significance. A large, photometrically classified quasar sample extending to z≈4 would be a useful resource for cosmological analyses if the quoted performance metrics generalize beyond the training set. The work demonstrates a practical application of standard ML tools to a wide-field survey.

major comments (2)
  1. [Abstract] Abstract: the central claim that the 872,372-object catalog is 'reliable for cosmological applications at z≈4' rests on the untested assumption that the 168,738-object SDSS-DES cross-match is representative of the full DES photometric population; no reweighting, domain-adaptation diagnostics, or magnitude-color distribution comparisons are described to address spectroscopic selection biases that are known to affect high-z quasar recovery.
  2. [Abstract] Abstract: the quoted performance (recall 0.77 at 0.99 precision) is given without error bars, cross-validation procedure, or sensitivity analysis to the choice of K or other hyperparameters, so it is impossible to judge whether the metric is robust or whether post-hoc tuning has occurred.
minor comments (2)
  1. [Abstract] Abstract: the redshift range is described as 'z ≈ 0.5 to z > 3, with a distinct population recovered at z ≈ 4'; provide the precise redshift bounds of the final catalog and the criterion used to identify the z≈4 population.
  2. [Abstract] Abstract: clarify whether the 'stacked outlier classifier' is applied before or after the hybrid photo-z step and how it affects the final sample sizes.

Simulated Author's Rebuttal

2 responses · 0 unresolved

We thank the referee for their constructive comments, which help clarify the scope and limitations of our work. We respond to each major comment below and indicate revisions to the manuscript.

read point-by-point responses
  1. Referee: [Abstract] Abstract: the central claim that the 872,372-object catalog is 'reliable for cosmological applications at z≈4' rests on the untested assumption that the 168,738-object SDSS-DES cross-match is representative of the full DES photometric population; no reweighting, domain-adaptation diagnostics, or magnitude-color distribution comparisons are described to address spectroscopic selection biases that are known to affect high-z quasar recovery.

    Authors: We agree that explicit checks for representativeness are needed to support the reliability claim. The manuscript uses the SDSS-DES cross-match as the largest available spectroscopic anchor for DES DR2, but we will revise the abstract and add a new subsection in the methods describing magnitude and color distribution comparisons between the training sample and the full DES point-like photometric population. We will also outline a magnitude-based reweighting scheme and note its limitations for high-z selection biases. revision: yes

  2. Referee: [Abstract] Abstract: the quoted performance (recall 0.77 at 0.99 precision) is given without error bars, cross-validation procedure, or sensitivity analysis to the choice of K or other hyperparameters, so it is impossible to judge whether the metric is robust or whether post-hoc tuning has occurred.

    Authors: The metrics were computed on a held-out test set after 5-fold cross-validation for hyperparameter tuning on the training portion. We will revise the abstract and methods to report bootstrap error bars on the recall and precision, explicitly describe the cross-validation folds, and include a sensitivity plot showing performance stability for K between 3 and 15. This will confirm that the reported values reflect validated choices rather than post-hoc adjustment. revision: yes

Circularity Check

0 steps flagged

No significant circularity in empirical ML classification and photo-z pipeline

full rationale

The paper applies off-the-shelf KNN and hybrid ML (ANNz BDT + scikit-learn regressor) to a cross-matched DES-SDSS training set of 168738 objects, then reports recall/precision and produces a catalog of 872372 objects. All performance numbers are computed directly against external spectroscopic labels; no functional form is fitted and then re-used as a 'prediction', no self-citation supplies a load-bearing uniqueness theorem, and no ansatz or renaming occurs. The representativeness of the training sample is an empirical assumption whose validity can be tested externally, but it does not make the reported metrics tautological by construction. The derivation chain is therefore self-contained against external benchmarks.

Axiom & Free-Parameter Ledger

2 free parameters · 1 axioms · 0 invented entities

The central results rest on the representativeness of the spectroscopic training set and on standard assumptions of supervised ML (i.i.d. training and test distributions, appropriate feature choice). No new physical axioms or invented entities are introduced.

free parameters (2)
  • K in KNN
    Hyperparameter controlling neighborhood size for classification; value not stated in abstract but required for the reported precision-recall numbers.
  • hyperparameters of boosted decision tree and regressor
    Learning rate, number of estimators, and tree depth chosen to optimize the hybrid photo-z model.
axioms (1)
  • domain assumption The cross-matched DES-SDSS sample is free of significant selection bias relative to the full photometric population.
    Invoked when training on 168k objects and applying to the larger photometric set.

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Reference graph

Works this paper leans on

94 extracted references · 94 canonical work pages · 3 internal anchors

  1. [1]

    Collaboration,The dark energy survey: More than dark energy – an overview,MNRAS 460(2016) 1270

    D.E.S. Collaboration,The dark energy survey: More than dark energy – an overview,MNRAS 460(2016) 1270. – 22 –

  2. [2]

    Collaboration,The dark energy survey, inThe Dark Energy Survey White Paper, 2005

    T.D.E.S. Collaboration,The dark energy survey, inThe Dark Energy Survey White Paper, 2005. [3]DES Collaborationcollaboration,Dark energy survey year 3 results: Cosmological constraints from galaxy clustering and weak lensing,Phys. Rev. D105(2022) 023520

  3. [3]

    Kessler et al.,Results from the dark energy survey supernova program,The Astronomical Journal150(2015) 172

    R. Kessler et al.,Results from the dark energy survey supernova program,The Astronomical Journal150(2015) 172

  4. [4]

    Ivezić et al.,Lsst: From science drivers to reference design and anticipated data products, Astrophys

    Ž. Ivezić et al.,Lsst: From science drivers to reference design and anticipated data products, Astrophys. J.873(2019) 111

  5. [5]

    Euclid Definition Study Report

    R. Laureijs et al.,Euclid definition study report,arXiv:1110.3193(2011)

  6. [6]

    Amendola, S

    L. Amendola, S. Appleby, D. Bacon, T. Baker, M. Baldi, N. Bartolo et al.,Cosmology and fundamental physics with the euclid satellite,Living Reviews in Relativity16(2013)

  7. [7]

    Rees,Black hole models for active galactic nuclei,Annu

    M.J. Rees,Black hole models for active galactic nuclei,Annu. Rev. Astron. Astrophys.22 (1984) 471

  8. [8]

    Van Waerbeke,Shear and magnification: cosmic complementarity,Monthly Notices of the Royal Astronomical Society401(2010) 2093

    L. Van Waerbeke,Shear and magnification: cosmic complementarity,Monthly Notices of the Royal Astronomical Society401(2010) 2093

  9. [9]

    X. Fan, E. Bañados and R.A. Simcoe,Quasars and the intergalactic medium at cosmic dawn, Annual Review of Astronomy and Astrophysics61(2023) 373

  10. [10]

    Zheng, K

    X. Zheng, K. Liao, M. Biesiada, S. Cao, T.-H. Liu and Z.-H. Zhu,Multiple measurements of quasars acting as standard probes: exploring the cosmic distance duality relation at higher redshift,The Astrophysical Journal892(2020) 103

  11. [11]

    Frieman, M.S

    J.A. Frieman, M.S. Turner and D. Huterer,Dark energy and the accelerating universe,Annual Review of Astronomy and Astrophysics46(2008) 385–432

  12. [12]

    Eisenstein et al.,Detection of the baryon acoustic peak in the large-scale correlation function of sdss luminous red galaxies,Astrophys

    D.J. Eisenstein et al.,Detection of the baryon acoustic peak in the large-scale correlation function of sdss luminous red galaxies,Astrophys. J.633(2005) 560

  13. [13]

    Cole, W.J

    S. Cole, W.J. Percival, J.A. Peacock, P. Norberg, C.M. Baugh, C.S. Frenk et al.,The 2df galaxy redshift survey: power-spectrum analysis of the final data set and cosmological implications,Monthly Notices of the Royal Astronomical Society362(2005) 505–534

  14. [14]

    Anderson, É

    L. Anderson, É. Aubourg, S. Bailey, F. Beutler, V. Bhardwaj, M. Blanton et al.,The clustering of galaxies in the sdss-iii baryon oscillation spectroscopic survey: baryon acoustic oscillations in the data releases 10 and 11 galaxy samples,Monthly Notices of the Royal Astronomical Society 441(2014) 24–62

  15. [15]

    S. Alam, M. Ata, S. Bailey, F. Beutler, D. Bizyaev, J.A. Blazek et al.,The clustering of galaxies in the completed sdss-iii baryon oscillation spectroscopic survey: cosmological analysis of the dr12 galaxy sample,Monthly Notices of the Royal Astronomical Society470(2017) 2617–2652

  16. [16]

    Huetsi,Acoustic oscillations in the sdss dr4 luminous red galaxy sample power spectrum, Astronomy & Astrophysics449(2006) 891

    G. Huetsi,Acoustic oscillations in the sdss dr4 luminous red galaxy sample power spectrum, Astronomy & Astrophysics449(2006) 891

  17. [17]

    Zhang, P

    H. Zhang, P. Behroozi, M. Volonteri, J. Silk, X. Fan, J. Aird et al.,Trinity ii: The luminosity-dependent bias of the supermassive black hole mass–galaxy mass relation for bright quasars at z= 6,Monthly Notices of the Royal Astronomical Society: Letters523(2023) L69

  18. [18]

    Rauch et al.,The lyman alpha forest in the spectra of quasars,Astrophys

    M. Rauch et al.,The lyman alpha forest in the spectra of quasars,Astrophys. J.489(1998) 7

  19. [19]

    A. Repp, H. Ebeling and J. Richard,A systematic search for lensed high-redshift galaxies in hst images of macs clusters,Monthly Notices of the Royal Astronomical Society457(2016) 1399

  20. [20]

    Richards et al.,Colors of 2625 quasars at 0 < z < 5 measured in the sloan digital sky survey photometric system,Astron

    G.T. Richards et al.,Colors of 2625 quasars at 0 < z < 5 measured in the sloan digital sky survey photometric system,Astron. J.123(2002) 2945. – 23 –

  21. [21]

    Tanaka, J

    M. Tanaka, J. Coupon, B.-C. Hsieh, S. Mineo, A.J. Nishizawa, J. Speagle et al.,Photometric redshifts for hyper suprime-cam subaru strategic program data release 1,Publications of the Astronomical Society of Japan70(2018) S9

  22. [22]

    Richards, M.A

    G.T. Richards, M.A. Weinstein, D.P. Schneider, X. Fan, M.A. Strauss, D.E. Vanden Berk et al.,Photometric redshifts of quasars,The Astronomical Journal122(2001) 1151

  23. [23]

    Joudaki, C

    S. Joudaki, C. Blake, A. Johnson, A. Amon, M. Asgari, A. Choi et al.,Kids-450+ 2dflens: Cosmological parameter constraints from weak gravitational lensing tomography and overlapping redshift-space galaxy clustering,Monthly Notices of the Royal Astronomical Society474(2018) 4894

  24. [24]

    Hildebrandt, M

    H. Hildebrandt, M. Viola, C. Heymans, S. Joudaki, K. Kuijken, C. Blake et al.,Kids-450: cosmological parameter constraints from tomographic weak gravitational lensing,Monthly Notices of the Royal Astronomical Society465(2017) 1454

  25. [25]

    Hildebrandt, M

    H. Hildebrandt, M. Brusa, O. Ilbert, P. Capak, M. Salvato et al.,Photometric redshifts in cosmology,The Astrophysical Journal721(2010) 109

  26. [26]

    Richards et al.,Efficient photometric selection of quasars from the sloan digital sky survey

    G.T. Richards et al.,Efficient photometric selection of quasars from the sloan digital sky survey. ii.∼1,000,000 quasars from data release 6,Astron. J.131(2006) 2766

  27. [27]

    Baldry, K

    I.K. Baldry, K. Glazebrook, J. Brinkmann, Ž. Ivezić, R.H. Lupton, R.C. Nichol et al., Morphological galaxy classification in the sloan digital sky survey,Astrophys. J.569(2002) 582

  28. [28]

    Fan et al.,Evolution of the ionizing background and the epoch of reionization from the spectra ofz∼6quasars,Astrophys

    X. Fan et al.,Evolution of the ionizing background and the epoch of reionization from the spectra ofz∼6quasars,Astrophys. J.526(1999) 57

  29. [29]

    Bolton, D.J

    A.S. Bolton, D.J. Schlegel, É. Aubourg, S. Bailey, V. Bhardwaj, J.R. Brownstein et al.,Spectral classification and redshift measurement for the sdss-iii baryon oscillation spectroscopic survey, The Astronomical Journal144(2012) 144

  30. [30]

    Fan, M.A

    X. Fan, M.A. Strauss, D.P. Schneider, J.E. Gunn, R.H. Lupton, B. Yanny et al.,High-redshift quasars found in sloan digital skysurvey commissioningdata,The Astronomical Journal118 (1999) 1

  31. [31]

    Weiner, A.C

    B.J. Weiner, A.C. Phillips, S.M. Faber, C.N.A. Willmer, N.P. Vogt, L. Simard et al.,A spectroscopic survey of redshift 1.4 galaxies in the goods-north field: The redshift catalog,The Astrophysical Journal620(2005) 595

  32. [32]

    Richards, X

    G.T. Richards, X. Fan, D.P. Schneider, D.E. Vanden Berk, M.A. Strauss, D.G. York et al., Colors of 2625 quasars at 0 < z < 5 measured in the sloan digital sky survey photometric system,The Astronomical Journal123(2002) 2945

  33. [33]

    Skrzypek, S.J

    N. Skrzypek, S.J. Warren and J.K. Faherty,Ukidss counterparts to cool wise-selected quasars: revealing a population of m-dwarf/quasar misidentifications,Monthly Notices of the Royal Astronomical Society458(2016) 2971–2977

  34. [34]

    J. Prat, C. Sánchez, Y. Fang, D. Gruen, J. Elvin-Poole, N. Kokron et al.,Dark energy survey year 1 results: Galaxy-galaxy lensing,Physical Review D98(2018) 042005

  35. [35]

    Vanden Berk et al.,Composite quasar spectra from the sloan digital sky survey,Astron

    D.E. Vanden Berk et al.,Composite quasar spectra from the sloan digital sky survey,Astron. J. 122(2001) 549

  36. [36]

    Brescia, S

    M. Brescia, S. Cavuoti, R. D’Abrusco, G. Longo and A. Mercurio,Photometric redshifts for quasars in multi-band surveys,The Astrophysical Journal772(2013) 140

  37. [37]

    Fan et al.,A survey ofz >5.8quasars in the sloan digital sky survey

    X. Fan et al.,A survey ofz >5.8quasars in the sloan digital sky survey. i. discovery of three new quasars and the spatial density of luminous quasars atz∼6,Astron. J.121(2001) 54

  38. [38]

    X.-B. Wu, W. Zhang and X. Zhou,Color-redshift relations and photometric redshift estimations of quasars in large sky surveys,Chinese Journal of Astronomy and Astrophysics4(2004) 17. – 24 – [40]DES and SPT Collaborationscollaboration,Dark energy survey year 1 results: Tomographic cross-correlations between dark energy survey galaxies and cmb lensing from s...

  39. [39]

    Abbott et al.,The dark energy survey: Data release 1,The Astrophysical Journal Supplement Series239(2018) 18

    T. Abbott et al.,The dark energy survey: Data release 1,The Astrophysical Journal Supplement Series239(2018) 18

  40. [40]

    Hoyle, M.M

    B. Hoyle, M.M. Rau, K. Paech, C. Bonnett and S. Seitz,Machine learning photometric redshifts with random forests and gaussian processes,Mon. Not. R. Astron. Soc.452(2015) 4183

  41. [41]

    Beck et al.,Photometric redshift estimation with a convolutional neural network,Mon

    R. Beck et al.,Photometric redshift estimation with a convolutional neural network,Mon. Not. R. Astron. Soc.472(2017) 949

  42. [42]

    Rumelhart, G.E

    D.E. Rumelhart, G.E. Hinton and R.J. Williams,Learning representations by back-propagating errors,nature323(1986) 533

  43. [43]

    Bottou,Large-scale machine learning with stochastic gradient descent, inProceedings of COMPSTAT’2010, pp

    L. Bottou,Large-scale machine learning with stochastic gradient descent, inProceedings of COMPSTAT’2010, pp. 177–186, Springer, 2010, DOI

  44. [44]

    Friedman,Greedy function approximation: A gradient boosting machine,Annals of statistics(2001) 1189

    J.H. Friedman,Greedy function approximation: A gradient boosting machine,Annals of statistics(2001) 1189

  45. [45]

    Oyaizu, M

    H. Oyaizu, M. Lima, C.E. Cunha, H. Lin, J. Frieman and E.S. Sheldon,A galaxy photometric redshift catalog for the sloan digital sky survey data release 6,The Astrophysical Journal674 (2008) 768–783

  46. [46]

    Almosallam, M.J

    I.A. Almosallam, M.J. Jarvis and S.J. Roberts,Gpz: non-stationary sparse gaussian processes for heteroscedastic uncertainty estimation in photometric redshifts,Monthly Notices of the Royal Astronomical Society462(2016) 726

  47. [47]

    Almosallam, S.N

    I.A. Almosallam, S.N. Lindsay, M.J. Jarvis and S.J. Roberts,A sparse gaussian process framework for photometric redshift estimation,Monthly Notices of the Royal Astronomical Society455(2016) 2387

  48. [48]

    Rivera, B

    J. Rivera, B. Moraes, A. Merson, S. Jouvel, F. Abdalla and M. Abdalla,Degradation analysis in the estimation of photometric redshifts from non-representative training sets,Monthly Notices of the Royal Astronomical Society477(2018) 4330

  49. [49]

    York et al.,The sloan digital sky survey: Technical summary,Astron

    D.G. York et al.,The sloan digital sky survey: Technical summary,Astron. J.120(2000) 1579

  50. [50]

    Kaiser et al.,The pan-starrs wide-field optical/nir imaging survey,Proc

    N. Kaiser et al.,The pan-starrs wide-field optical/nir imaging survey,Proc. SPIE7733(2010)

  51. [51]

    Newman, M.C

    J.A. Newman, M.C. Cooper, M. Davis, S. Faber, A.L. Coil, P. Guhathakurta et al.,The deep2 galaxy redshift survey: Design, observations, data reduction, and redshifts,The Astrophysical Journal Supplement Series208(2013) 5

  52. [52]

    Dawson et al.,The baryon oscillation spectroscopic survey of sdss-iii,Astron

    K.S. Dawson et al.,The baryon oscillation spectroscopic survey of sdss-iii,Astron. J.145 (2013) 10

  53. [53]

    Masters, D.K

    D.C. Masters, D.K. Stern, J.G. Cohen, P.L. Capak, S.A. Stanford, N. Hernitschek et al.,The complete calibration of the color–redshift relation (c3r2) survey: analysis and data release 2, The Astrophysical Journal877(2019) 81

  54. [54]

    Pedregosa et al.,Scikit-learn: Machine learning in python,J

    F. Pedregosa et al.,Scikit-learn: Machine learning in python,J. Mach. Learn. Res.12(2011) 2825–2830

  55. [55]

    Sadeh et al.,Annz2: Photometric redshift and probability distribution function estimation using machine learning,ApJS219(2016) 1

    I. Sadeh et al.,Annz2: Photometric redshift and probability distribution function estimation using machine learning,ApJS219(2016) 1

  56. [56]

    Abdalla, F.B

    E. Abdalla, F.B. Abdalla, A. Marins, A. Queiroz, R.M. Ribeiro and A.S. Souza,Machine learning analysis of photometric data from the dark energy survey,arXiv preprint arXiv:2508.10191(2025) . – 25 –

  57. [57]

    Bandura, G.E

    K. Bandura, G.E. Addison, M. Amiri, J.R. Bond, D. Campbell-Wilson, L. Connor et al., Canadian hydrogen intensity mapping experiment (chime) pathfinder, inGround-based and Airborne Telescopes V, vol. 9145, pp. 738–757, SPIE, 2014

  58. [58]

    R. Nan, D. Li, C. Jin, Q. Wang, L. Zhu, W. Zhu et al.,The five-hundred-meter aperture spherical radio telescope (fast) project,International Journal of Modern Physics D20(2011) 989

  59. [59]

    HI intensity mapping with FAST

    M.-A. Bigot-Sazy, Y.-Z. Ma, R.A. Battye, I.W. Browne, T. Chen, C. Dickinson et al.,Hi intensity mapping with fast,arXiv preprint arXiv:1511.03006(2015)

  60. [60]

    Cosmology with a SKA HI intensity mapping survey

    M.G. Santos, P. Bull, D. Alonso, S. Camera, P.G. Ferreira, G. Bernardi et al.,Cosmology with a ska hi intensity mapping survey,arXiv preprint arXiv:1501.03989(2015)

  61. [61]

    Chen,The tianlai project: a 21cm cosmology experiment, inInternational Journal of Modern Physics: Conference Series, vol

    X. Chen,The tianlai project: a 21cm cosmology experiment, inInternational Journal of Modern Physics: Conference Series, vol. 12, pp. 256–263, World Scientific, 2012

  62. [62]

    Abdalla, E.G

    E. Abdalla, E.G. Ferreira, R.G. Landim, A.A. Costa, K.S. Fornazier, F.B. Abdalla et al.,The bingo project-i. baryon acoustic oscillations from integrated neutral gas observations, Astronomy & Astrophysics664(2022) A14

  63. [63]

    Wuensche, T

    C.A. Wuensche, T. Villela, E. Abdalla, V. Liccardo, F. Vieira, I. Browne et al.,The bingo project-ii. instrument description,Astronomy & Astrophysics664(2022) A15

  64. [64]

    Abdalla, A

    F.B. Abdalla, A. Marins, P. Motta, E. Abdalla, R.M. Ribeiro, C.A. Wuensche et al.,The bingo project-iii. optical design and optimization of the focal plane,Astronomy & Astrophysics664 (2022) A16

  65. [65]

    Liccardo, E.J

    V. Liccardo, E.J. de Mericia, C.A. Wuensche, E. Abdalla, F.B. Abdalla, L. Barosi et al.,The bingo project-iv. simulations for mission performance assessment and preliminary component separation steps,Astronomy & Astrophysics664(2022) A17

  66. [66]

    Fornazier, F.B

    K.S. Fornazier, F.B. Abdalla, M. Remazeilles, J. Vieira, A. Marins, E. Abdalla et al.,The bingo project-v. further steps in component separation and bispectrum analysis,Astronomy & Astrophysics664(2022) A18

  67. [67]

    Zhang, P

    J. Zhang, P. Motta, C.P. Novaes, F.B. Abdalla, A.A. Costa, B. Wang et al.,The bingo project-vi. h i halo occupation distribution and mock building,Astronomy & Astrophysics664 (2022) A19

  68. [68]

    Costa, R.G

    A.A. Costa, R.G. Landim, C.P. Novaes, L. Xiao, E.G. Ferreira, F.B. Abdalla et al.,The bingo project-vii. cosmological forecasts from 21 cm intensity mapping,Astronomy & Astrophysics 664(2022) A20

  69. [69]

    Novaes, J

    C.P. Novaes, J. Zhang, E.J. de Mericia, F.B. Abdalla, V. Liccardo, C.A. Wuensche et al.,The bingo project-viii. recovering the bao signal in hi intensity mapping simulations,Astronomy & Astrophysics666(2022) A83

  70. [70]

    Santos, R.G

    M.V.d. Santos, R.G. Landim, G.A. Hoerning, F.B. Abdalla, A. Queiroz, E. Abdalla et al.,The bingo project ix: Search for fast radio bursts–a forecast for the bingo interferometry system, arXiv preprint arXiv:2308.06805(2023)

  71. [71]

    Abbott et al.,Dark energy survey year 3 results: Data release 2,The Astrophysical Journal Supplement Series255(2021) 20

    T. Abbott et al.,Dark energy survey year 3 results: Data release 2,The Astrophysical Journal Supplement Series255(2021) 20

  72. [72]

    Ahumada et al.,The 16th data release of the sloan digital sky surveys,The Astrophysical Journal Supplement Series249(2020) 3

  73. [73]

    Kunszt, A.S

    P.Z. Kunszt, A.S. Szalay and A.R. Thakar,The hierarchical triangular mesh, inMining the Sky, pp. 631–637, Springer, 2001

  74. [74]

    Cover and P

    T. Cover and P. Hart,Nearest neighbor pattern classification,IEEE Transactions on Information Theory13(1967) 21. – 26 –

  75. [75]

    Ball, R.J

    N.M. Ball, R.J. Brunner, A.D. Myers, Z.I. Tsvetanov and S. Djorgovski,A robust k-nearest neighbor method for photometric redshifts,The Astrophysical Journal663(2007) 774

  76. [76]

    Viquar, S

    M. Viquar, S. Basak, A. Dasgupta, S. Agrawal and S. Saha,Machine learning in astronomy: A case study in quasar-star classification,Emerging Technologies in Data Mining and Information Security: Proceedings of IEMIS 2018, Volume 3(2019) 827

  77. [77]

    L. Li, Y. Zhang and Y. Zhao,k-nearest neighbors for automated classification of celestial objects,Science in China Series G: Physics, Mechanics and Astronomy51(2008) 916

  78. [78]

    Van der Maaten and G

    L. Van der Maaten and G. Hinton,Visualizing data using t-sne.,Journal of machine learning research9(2008)

  79. [79]

    Benitez,Bayesian photometric redshift estimation,The Astrophysical Journal536(2000) 571

    N. Benitez,Bayesian photometric redshift estimation,The Astrophysical Journal536(2000) 571

  80. [80]

    Arnouts and O

    S. Arnouts and O. Ilbert,Lephare: Photometric analysis for redshift estimate,Astrophysics Source Code Library(2011) ascl

Showing first 80 references.