The Completed SDSS-IV extended Baryon Oscillation Spectroscopic Survey: Large-scale Structure Catalogs for Cosmological Analysis
Ashley J. Ross (Ohio State University), Julian Bautista, Rita Tojeiro,, Shadab Alam, Stephen Bailey, Etienne Burtin, Johan Comparat, Kyle S. Dawson,, Arnaud de Mattia, H\'elion du Mas des Bourboux, H\'ector Gil-Mar\'in, Jiamin, Hou, Hui Kong, Brad W. Lyke, Faizan G. Mohammad

TL;DR
This paper presents large-scale structure catalogs from the completed eBOSS survey, providing corrected data samples for cosmological analysis, with improved redshift estimation algorithms and systematic corrections to ensure reliable clustering measurements.
Contribution
The paper introduces new catalogs from eBOSS DR16 with enhanced redshift estimation and systematic correction methods, enabling more accurate cosmological tests.
Findings
Catalogs contain 343,708 quasars and 377,458 galaxies with high redshift success rates.
Systematic corrections significantly reduce observational biases in the data.
The catalogs support precise large-scale structure measurements for cosmology.
Abstract
We present large-scale structure catalogs from the completed extended Baryon Oscillation Spectroscopic Survey (eBOSS). Derived from Sloan Digital Sky Survey (SDSS) -IV Data Release 16 (DR16), these catalogs provide the data samples, corrected for observational systematics, and random positions sampling the survey selection function. Combined, they allow large-scale clustering measurements suitable for testing cosmological models. We describe the methods used to create these catalogs for the eBOSS DR16 Luminous Red Galaxy (LRG) and Quasar samples. The quasar catalog contains 343,708 redshifts with over 4,808\,deg. We combine 174,816 eBOSS LRG redshifts over 4,242\,deg in the redshift interval with SDSS-III BOSS LRGs in the same redshift range to produce a combined sample of 377,458 galaxy redshifts distributed over 9,493\,deg. Improved…
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