Dark Energy Survey Year 1 Results: Galaxy-Galaxy Lensing
J. Prat, C. S\'anchez, Y. Fang, D. Gruen, J. Elvin-Poole, N. Kokron,, L. F. Secco, B. Jain, R. Miquel, N. MacCrann, M. A. Troxel, A. Alarcon, D., Bacon, G. M. Bernstein, J. Blazek, R. Cawthon, C. Chang, M. Crocce, C. Davis,, J. De Vicente, J. P. Dietrich, A. Drlica-Wagner

TL;DR
This paper presents galaxy-galaxy lensing measurements from DES Year 1 data, including systematic tests and validation, contributing to cosmological analyses by providing robust galaxy-matter correlation insights.
Contribution
It introduces comprehensive systematic testing and validation methods for galaxy-galaxy lensing measurements in DES Y1 data, supporting cosmological parameter estimation.
Findings
Galaxy bias estimates consistent with galaxy clustering
Galaxy-matter cross-correlation coefficient r ≈ 1
Validation of source redshift distributions
Abstract
We present galaxy-galaxy lensing measurements from 1321 sq. deg. of the Dark Energy Survey (DES) Year 1 (Y1) data. The lens sample consists of a selection of 660,000 red galaxies with high-precision photometric redshifts, known as redMaGiC, split into five tomographic bins in the redshift range . We use two different source samples, obtained from the Metacalibration (26 million galaxies) and Im3shape (18 million galaxies) shear estimation codes, which are split into four photometric redshift bins in the range . We perform extensive testing of potential systematic effects that can bias the galaxy-galaxy lensing signal, including those from shear estimation, photometric redshifts, and observational properties. Covariances are obtained from jackknife subsamples of the data and validated with a suite of log-normal simulations. We use the shear-ratio geometric…
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