Dark Energy Survey Year 3 Results: Cosmology from galaxy clustering and galaxy-galaxy lensing in harmonic space
L. Faga, F. Andrade-Oliveira, H. Camacho, R. Rosenfeld, M. Lima, C., Doux, X. Fang, J. Prat, A. Porredon, M. Aguena, A. Alarcon, S. Allam, O., Alves, A. Amon, S. Avila, D. Bacon, K. Bechtol, M. R. Becker, G. M., Bernstein, S. Bocquet, D. Brooks, E. Buckley-Geer, A. Campos

TL;DR
This paper presents a harmonic space analysis of galaxy clustering and lensing from DES Y3 data, providing cosmological constraints consistent with previous configuration space results and demonstrating the method's robustness.
Contribution
It introduces a novel harmonic space analysis pipeline for DES Y3 data, including covariance validation and stress testing, advancing cosmological parameter estimation techniques.
Findings
Measured $S_8$ constraints: 0.704±0.029 (redMaGiC), 0.753±0.024 (MagLim)
Dark energy equation of state $w$ constraints: -1.28±0.29, -1.26+0.34-0.27
Results are compatible with previous configuration space analyses.
Abstract
We present the joint tomographic analysis of galaxy-galaxy lensing and galaxy clustering in harmonic space, using galaxy catalogues from the first three years of observations by the Dark Energy Survey (DES Y3). We utilise the redMaGiC and MagLim catalogues as lens galaxies and the METACALIBRATION catalogue as source galaxies. The measurements of angular power spectra are performed using the pseudo- method, and our theoretical modelling follows the fiducial analyses performed by DES Y3 in configuration space, accounting for galaxy bias, intrinsic alignments, magnification bias, shear magnification bias and photometric redshift uncertainties. We explore different approaches for scale cuts based on non-linear galaxy bias and baryonic effects contamination. Our fiducial covariance matrix is computed analytically, accounting for mask geometry in the Gaussian term, and including…
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