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Local primordial non-Gaussianity from the large-scale clustering of photometric DESI luminous red galaxies

Authors :
Rezaie, Mehdi
Ross, Ashley J.
Seo, Hee-Jong
Kong, Hui
Porredon, Anna
Samushia, Lado
Chaussidon, Edmond
Krolewski, Alex
de Mattia, Arnaud
Beutler, Florian
Aguilar, Jessica Nicole
Ahlen, Steven
Alam, Shadab
Avila, Santiago
Bahr-Kalus, Benedict
Bermejo-Climent, Jose
Brooks, David
Claybaugh, Todd
Cole, Shaun
Dawson, Kyle
de la Macorra, Axel
Doel, Peter
Font-Ribera, Andreu
Forero-Romero, Jaime E.
Gontcho, Satya Gontcho A
Guy, Julien
Honscheid, Klaus
Huterer, Dragan
Kisner, Theodore
Landriau, Martin
Levi, Michael
Manera, Marc
Meisner, Aaron
Miquel, Ramon
Mueller, Eva-Maria
Myers, Adam
Newman, Jeffrey A.
Nie, Jundan
Palanque-Delabrouille, Nathalie
Percival, Will
Poppett, Claire
Rossi, Graziano
Sanchez, Eusebio
Schubnell, Michael
Tarlé, Gregory
Weaver, Benjamin Alan
Yèche, Christophe
Zhou, Zhimin
Zou, Hu
Publication Year :
2023

Abstract

We use angular clustering of luminous red galaxies from the Dark Energy Spectroscopic Instrument (DESI) imaging surveys to constrain the local primordial non-Gaussianity parameter $\fnl$. Our sample comprises over 12 million targets, covering 14,000 square degrees of the sky, with redshifts in the range $0.2< z < 1.35$. We identify Galactic extinction, survey depth, and astronomical seeing as the primary sources of systematic error, and employ linear regression and artificial neural networks to alleviate non-cosmological excess clustering on large scales. Our methods are tested against simulations with and without $\fnl$ and systematics, showing superior performance of the neural network treatment. The neural network with a set of nine imaging property maps passes our systematic null test criteria, and is chosen as the fiducial treatment. Assuming the universality relation, we find $\fnl = 34^{+24(+50)}_{-44(-73)}$ at 68\%(95\%) confidence. We apply a series of robustness tests (e.g., cuts on imaging, declination, or scales used) that show consistency in the obtained constraints. We study how the regression method biases the measured angular power-spectrum and degrades the $\fnl$ constraining power. The use of the nine maps more than doubles the uncertainty compared to using only the three primary maps in the regression. Our results thus motivate the development of more efficient methods that avoid over-correction, protect large-scale clustering information, and preserve constraining power. Additionally, our results encourage further studies of $\fnl$ with DESI spectroscopic samples, where the inclusion of 3D clustering modes should help separate imaging systematics and lessen the degradation in the $\fnl$ uncertainty.<br />Comment: 21 pages, 17 figures, 7 tables (Appendix excluded). Published in MNRAS

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2307.01753
Document Type :
Working Paper
Full Text :
https://doi.org/10.1093/mnras/stae886