The completed SDSS-IV extended Baryon Oscillation Spectroscopic Survey: Cosmological implications from multi-tracer BAO analysis with galaxies and voids
Cheng Zhao, Andrei Variu, Mengfan He, Daniel Forero Sanchez, Am\'elie, Tamone, Chia-Hsun Chuang, Francisco-Shu Kitaura, Charling Tao, Jiaxi Yu,, Jean-Paul Kneib, Will J. Percival, Huanyuan Shan, Gong-Bo Zhao, Etienne, Burtin, Kyle S. Dawson, Graziano Rossi, Donald P. Schneider

TL;DR
This study enhances cosmological parameter constraints by combining galaxy and void clustering data from SDSS, demonstrating improved BAO measurement precision and tighter cosmological constraints within the flat-$ m extLambda$CDM model.
Contribution
It introduces a joint BAO analysis using galaxy and void correlation functions, showing that including voids reduces uncertainties and improves cosmological parameter estimates.
Findings
BAO peak detected in all correlation functions.
Multi-tracer BAO analysis yields ~10% uncertainty reduction.
Combined data constrains $H_0$, $ m extOmega_m$, and $ m extOmega_ extLambda h^2$ more tightly.
Abstract
We construct cosmic void catalogues with the DIVE void finder upon SDSS BOSS DR12 and eBOSS DR16 galaxy samples with BAO reconstruction applied, and perform a joint BAO analysis using different types of galaxies and the corresponding voids. The BAO peak is evident for the galaxy-galaxy, galaxy-void, and void-void correlation functions of all datasets, including the ones cross correlating luminous red galaxy and emission line galaxy samples. Two multi-tracer BAO fitting schemes are then tested, one combining the galaxy and void correlation functions with a weight applied to voids, and the other using a single BAO dilation parameter for all clustering measurements of different tracers. Both methods produce consistent results with mock catalogues, and on average ~10 per cent improvements of the BAO statistical uncertainties are observed for all samples, compared to the results from…
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