The triply-ionized carbon forest from eBOSS: cosmological correlations with quasars in SDSS-IV DR14
Michael Blomqvist, Matthew M. Pieri, H\'elion du Mas des Bourboux,, Nicol\'as G. Busca, An\v{z}e Slosar, Julian E. Bautista, Jonathan Brinkmann,, Joel R. Brownstein, Kyle Dawson, Victoria de Sainte Agathe, Julien Guy, Will, J. Percival, Ignasi P\'erez-R\`afols, James Rich

TL;DR
This paper measures the cross-correlation of the CIV forest with quasars using SDSS-IV eBOSS data, providing insights into large-scale structure and potential for baryon acoustic oscillation detection at redshifts below 2.
Contribution
It presents the first large-scale correlation measurements of the CIV forest with quasars, estimating key parameters and demonstrating its potential for BAO studies.
Findings
CIV redshift-space distortion parameter is approximately 0.27.
CIV bias parameter combined with distortion parameter is about -0.0183.
Weak redshift evolution of CIV bias compared to Lyα forest.
Abstract
We present measurements of the cross-correlation of the triply-ionized carbon (CIV) forest with quasars using Sloan Digital Sky Survey Data Release 14. The study exploits a large sample of new quasars from the first two years of observations by the Extended Baryon Oscillation Spectroscopic Survey (eBOSS). The CIV forest is a weaker tracer of large-scale structure than the Ly forest, but benefits from being accessible at redshifts where the quasar number density from eBOSS is high. Our data sample consists of 287,651 CIV forest quasars in the redshift range and 387,315 tracer quasars with . We measure large-scale correlations from CIV absorption occuring in three distinct quasar rest-frame wavelength bands of the spectra referred to as the CIV forest, the SiIV forest and the Ly forest. From the combined fit to the quasar-CIV cross-correlations…
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