Dark Energy Survey Year 3 Results: Optimizing the Lens Sample in Combined Galaxy Clustering and Galaxy-Galaxy Lensing Analysis
A. Porredon, M. Crocce, P. Fosalba, J. Elvin-Poole, A. Carnero Rosell,, R. Cawthon, T. F. Eifler, X. Fang, I. Ferrero, E. Krause, N. MacCrann, N., Weaverdyck, T. M. C. Abbott, M. Aguena, S. Allam, A. Amon, S. Avila, D., Bacon, E. Bertin, S. Bhargava, S. L. Bridle, D. Brooks

TL;DR
This study optimizes galaxy lens sample selection in DES Year 3 data to enhance cosmological constraints from galaxy clustering and lensing, demonstrating significant improvements over existing samples.
Contribution
It introduces the MagLim sample selection method, which increases galaxy density and redshift coverage, leading to substantial gains in cosmological parameter constraints.
Findings
MagLim sample yields 40% higher figure of merit in wCDM.
Optimal flux-limited sample increases galaxy count but slightly worsens constraints.
Results are robust against galaxy bias and redshift uncertainties.
Abstract
We investigate potential gains in cosmological constraints from the combination of galaxy clustering and galaxy-galaxy lensing by optimizing the lens galaxy sample selection using information from Dark Energy Survey (DES) Year 3 data and assuming the DES Year 1 Metacalibration sample for the sources. We explore easily reproducible selections based on magnitude cuts in -band as a function of (photometric) redshift, , and benchmark the potential gains against those using the well established redMaGiC sample. We focus on the balance between density and photometric redshift accuracy, while marginalizing over a realistic set of cosmological and systematic parameters. Our optimal selection, the MagLim sample, satisfies and has wider redshift distributions but times more galaxies than redMaGiC. Assuming a wCDM model and…
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