Constraining primordial non-Gaussianity with DESI 2024 LRG and QSO samples
E. Chaussidon, C. Y\`eche, A. de Mattia, C. Payerne, P. McDonald, A. J. Ross, S. Ahlen, D. Bianchi, D. Brooks, E. Burtin, T. Claybaugh, A. de la Macorra, P. Doel, S. Ferraro, A. Font-Ribera, J. E. Forero-Romero, E. Gazta\~naga, H. Gil-Mar\'in, S. Gontcho A Gontcho, G. Gutierrez

TL;DR
This paper uses DESI DR1 data to constrain primordial non-Gaussianity through large-scale clustering of galaxies and quasars, achieving the most precise measurement to date with innovative bias mitigation techniques.
Contribution
It introduces a new analysis of DESI DR1 data for PNG, employing a blinding procedure and improved window function modeling, surpassing previous large-scale structure constraints.
Findings
Measured f_NL^{loc} = -3.6_{-9.1}^{+9.0} with combined samples.
Achieved the most precise large-scale structure PNG constraint to date.
Validated methodology with blinded data and advanced window function corrections.
Abstract
We analyse the large-scale clustering of the Luminous Red Galaxy (LRG) and Quasar (QSO) sample from the first data release (DR1) of the Dark Energy Spectroscopic Instrument (DESI). In particular, we constrain the primordial non-Gaussianity (PNG) parameter via the large-scale scale-dependent bias in the power spectrum using LRGs () and QSOs (). This new measurement takes advantage of the enormous statistical power at large scales of DESI DR1 data, surpassing the latest data release (DR16) of the extended Baryon Oscillation Spectroscopic Survey (eBOSS). For the first time in this kind of analysis, we use a blinding procedure to mitigate the risk of confirmation bias in our results. We improve the model of the radial integral constraint proposing an innovative correction of the window function. We also carefully…
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