The Clustering of Galaxies in the Completed SDSS-III Baryon Oscillation Spectroscopic Survey: single-probe measurements from DR12 galaxy clustering -- towards an accurate model
Chia-Hsun Chuang, Marcos Pellejero-Ibanez, Sergio Rodr\'iguez-Torres,, Ashley J. Ross, Gong-bo Zhao, Yuting Wang, Antonio J. Cuesta, J. A., Rubi\~no-Mart\'in, Francisco Prada, Shadab Alam, Florian Beutler, Daniel J., Eisenstein, H\'ector Gil-Mar\'in, Jan Niklas Grieb, Shirley Ho

TL;DR
This paper presents a detailed analysis of galaxy clustering data from SDSS-III BOSS DR12 to measure cosmological parameters, introduces a new faster methodology for theoretical modeling, and combines results with Planck data to test cosmological models.
Contribution
Develops a new efficient methodology for analyzing galaxy clustering data, enabling faster constraints on cosmological parameters from BOSS DR12.
Findings
Measured $D_A(z)$, $H(z)$, $f(z)\sigma_8(z)$, and $\Omega_mh^2$ at two redshifts with specified uncertainties.
Combined galaxy clustering results with Planck data to constrain cosmological parameters within various models.
Confirmed consistency of results with the flat $\Lambda$CDM paradigm.
Abstract
We analyse the broad-range shape of the monopole and quadrupole correlation functions of the BOSS Data Release 12 (DR12) CMASS and LOWZ galaxy sample to obtain constraints on the Hubble expansion rate , the angular-diameter distance , the normalised growth rate , and the physical matter density . We adopt wide and flat priors on all model parameters in order to ensure the results are those of a `single-probe' galaxy clustering analysis. We also marginalise over three nuisance terms that account for potential observational systematics affecting the measured monopole. However, such Monte Carlo Markov Chain analysis is computationally expensive for advanced theoretical models, thus we develop a new methodology to speed up our analysis. We obtain Mpc, kmsMpc, , $\Omega_m…
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