GPZ: non-stationary sparse Gaussian processes for heteroscedastic uncertainty estimation in photometric redshifts

被引:85
|
作者
Almosallam, Ibrahim A. [1 ,2 ]
Jarvis, Matt J. [3 ,4 ]
Roberts, Stephen J. [2 ]
机构
[1] King Abdulaziz City Sci & Technol, Riyadh 1142, Saudi Arabia
[2] Parks Rd, Oxford OX1 3PJ, England
[3] Oxford Astrophys, Dept Phys, Keble Rd, Oxford OX1 3RH, England
[4] Univ Western Cape, Dept Phys, ZA-7535 Bellville, South Africa
关键词
methods: data analysis; galaxies: distances and redshifts; PROCESS REGRESSION; PREDICTION; SDSS;
D O I
10.1093/mnras/stw1618
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
The next generation of cosmology experiments will be required to use photometric redshifts rather than spectroscopic redshifts. Obtaining accurate and well-characterized photometric redshift distributions is therefore critical for Euclid, the Large Synoptic Survey Telescope and the Square Kilometre Array. However, determining accurate variance predictions alongside single point estimates is crucial, as they can be used to optimize the sample of galaxies for the specific experiment (e.g. weak lensing, baryon acoustic oscillations, supernovae), trading off between completeness and reliability in the galaxy sample. The various sources of uncertainty in measurements of the photometry and redshifts put a lower bound on the accuracy that any model can hope to achieve. The intrinsic uncertainty associated with estimates is often non-uniform and input-dependent, commonly known in statistics as heteroscedastic noise. However, existing approaches are susceptible to outliers and do not take into account variance induced by non-uniform data density and in most cases require manual tuning of many parameters. In this paper, we present a Bayesian machine learning approach that jointly optimizes the model with respect to both the predictive mean and variance we refer to as Gaussian processes for photometric redshifts (GPZ). The predictive variance of the model takes into account both the variance due to data density and photometric noise. Using the Sloan Digital Sky Survey (SDSS) DR12 data, we show that our approach substantially outperforms other machine learning methods for photo-z estimation and their associated variance, such as TPZ and ANNZ2. We provide a MATLAB and PYTHON implementations that are available to download at https://github.com/OxfordML/GPz.
引用
收藏
页码:726 / 739
页数:14
相关论文
共 50 条
  • [41] SPARSE RECOVERY AND NON-STATIONARY BLIND DEMODULATION
    Xie, Youye
    Wakin, Michael B.
    Tang, Gongguo
    2019 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2019, : 5566 - 5570
  • [42] Detection of Non-Stationary Photometric Perturbations on Projection Screens
    Castaneda-Garay, Miguel
    Diaz-Tula, Antonio
    Belmonte-Fernandez, Oscar
    Perez-Roses, Hebert
    JOURNAL OF RESEARCH AND PRACTICE IN INFORMATION TECHNOLOGY, 2012, 44 (04): : 423 - 440
  • [43] Non-stationary Gaussian models with physical barriers
    Bakka, Haakon
    Vanhatalo, Jarno
    Illian, Janine B.
    Simpson, Daniel
    Rue, Havard
    SPATIAL STATISTICS, 2019, 29 : 268 - 288
  • [44] ESTIMATION OF PARAMETERS OF GAUSSIAN STATIONARY PROCESSES
    TANIGUCHI, M
    JOURNAL OF APPLIED PROBABILITY, 1979, 16 (03) : 575 - 591
  • [45] Preliminary Estimation in Gaussian Stationary Processes
    Haddad, John N.
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2009, 38 (05) : 742 - 747
  • [46] Photometric redshift estimation using Gaussian processes
    Bonfield, D. G.
    Sun, Y.
    Davey, N.
    Jarvis, M. J.
    Abdalla, F. B.
    Banerji, M.
    Adams, R. G.
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2010, 405 (02) : 987 - 994
  • [47] An Entropy Measure of Non-Stationary Processes
    Liu, Ling Feng
    Hu, Han Ping
    Deng, Ya Shuang
    Ding, Nai Da
    ENTROPY, 2014, 16 (03) : 1493 - 1500
  • [48] Operatorial non-stationary harmonizable processes
    Valusescu, I
    ZEITSCHRIFT FUR ANGEWANDTE MATHEMATIK UND MECHANIK, 1996, 76 : 695 - 696
  • [49] SUPERIMPOSED NON-STATIONARY RENEWAL PROCESSES
    BLUMENTHAL, S
    GREENWOO.JA
    HERBACH, L
    JOURNAL OF APPLIED PROBABILITY, 1971, 8 (01) : 184 - +