4.7 Article

Estimating cosmological parameter covariance

Journal

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
Volume 442, Issue 3, Pages 2728-2738

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stu996

Keywords

methods: data analysis; methods: statistical; cosmological parameters; large-scale structure of Universe

Funding

  1. STFC Ernest Rutherford Fellowship [ST/J004421/1]
  2. Science and Technology Facilities Council [ST/J004421/1, ST/J004421/2] Funding Source: researchfish
  3. STFC [ST/J004421/1, ST/J004421/2] Funding Source: UKRI

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We investigate the bias and error in estimates of the cosmological parameter covariance matrix due to sampling or modelling the data covariance matrix, for likelihood width and peak scatter estimators. We show that these estimators do not coincide unless the data covariance is exactly known. For sampled data covariances with Gaussian-distributed data and parameters, the parameter covariance matrix estimated from the width of the likelihood has a Wishart distribution, from which we derive the mean and covariance. This mean is biased and we propose an unbiased estimator of the parameter covariance matrix. Comparing our analytic results to a numerical Wishart sampler of the data covariance matrix we find excellent agreement. An accurate ansatz for the mean parameter covariance for the peak scatter estimator is found, and we fit its covariance to our numerical analysis. The mean is again biased and we propose an unbiased estimator for the peak parameter covariance. For sampled data covariances, the width estimator is more accurate than the peak scatter estimator. We investigate modelling the data covariance, or equivalently data compression, and show that the peak scatter estimator is less sensitive to biases in the model data covariance matrix than the width estimator, but requires independent realizations of the data to reduce the statistical error. If the model bias on the peak estimator is sufficiently low, this is promising, otherwise the sampled width estimator is preferable.

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Article Astronomy & Astrophysics

KiDS-1000: Cross-correlation with Planck cosmic microwave background lensing and intrinsic alignment removal with self-calibration

Ji Yao, Huanyuan Shan, Pengjie Zhang, Xiangkun Liu, Catherine Heymans, Benjamin Joachimi, Marika Asgari, Maciej Bilicki, Hendrik Hildebrandt, Konrad Kuijken, Tilman Troster, Jan Luca van den Busch, Angus Wright, Ziang Yan

Summary: In this study, the impact of intrinsic alignments on the Kilo-Degree Survey (KiDS) galaxy lensing shear and Planck CMB lensing convergence cross-correlation is investigated and compared to previous treatments. The results show that using the IA self-calibration method can effectively break the degeneracy between CMB lensing and IA, providing the best-fit values. Moreover, appropriate treatment of the boost factor, cosmic magnification, and photometric redshift modeling is crucial for obtaining accurate IA and cosmological results.

ASTRONOMY & ASTROPHYSICS (2023)

Article Astronomy & Astrophysics

The Physics of the Accelerating Universe Survey: narrow-band image photometry

S. Serrano, E. Gaztanaga, F. J. Castander, M. Eriksen, R. Casas, D. Navarro-Girones, A. Alarcon, A. Bauer, L. Cabayol, J. Carretero, E. Fernandez, C. Neissner, P. Renard, P. Tallada-Crespi, N. Tonello, I. Sevilla-Noarbe, M. Crocce, J. Garcia-Bellido, H. Hildebrandt, H. Hoekstra, B. Joachimi, R. Miquel, C. Padilla, E. Sanchez, J. de Vicente

Summary: PAUCam is an innovative optical narrow-band imager that is mounted on the William Herschel Telescope for the Physics of the Accelerating Universe Survey. This paper presents two pipelines developed by the PAUS data management team to generate science-ready catalogues from uncalibrated raw images. The Nightly pipeline handles image processing with bespoke algorithms for photometric calibration and scatter-light correction, while the Multi-Epoch and Multi-Band Analysis pipeline optimizes photometric redshift performance through forced photometry. The results show that the current approach achieves an inter-band photometric calibration of 0.8% with state-of-the-art photo-z down to i(AB) = 23.0.

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2023)

Article Physics, Multidisciplinary

Constraints on the Cosmic Expansion Rate at Redshift 2.3 from the Lyman-α Forest

Andrei Cuceu, Andreu Font-Ribera, Seshadri Nadathur, Benjamin Joachimi, Paul Martini

Summary: We determine the product of the expansion rate and angular-diameter distance at redshift z = 2.3 from Lyman-alpha forest correlations measured by the Sloan Digital Sky Survey. Our result is the most precise from large-scale structure at z > 1. Using a cold dark matter model, we determine the matter density and the Hubble constant to be SZm = 0.36 ± 0.03 -0.04 and H0 = 63.2 ± 2.5 km/s/Mpc, respectively. Combining with other SDSS tracers, we find H0 = 67.2 ± 0.9 km/s/Mpc and measure the dark energy equation-of-state parameter to be w = -0.90 ± 0.12. Our Letter opens a new avenue for constraining cosmology at high redshift.

PHYSICAL REVIEW LETTERS (2023)

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