Galaxy-galaxy lensing with the DES-CMASS catalogue: measurement and constraints on the galaxy-matter cross-correlation
S. Lee, M. A. Troxel, A. Choi, J. Elvin-Poole, C. Hirata, K., Honscheid, E. M. Huff, N. MacCrann, A. J. Ross, T. F. Eifler, C. Chang, R., Miquel, Y. Omori, J. Prat, G. M. Bernstein, C. Davis, J. DeRose, M. Gatti, M., M. Rau, S. Samuroff, C. S\'anchez, P. Vielzeuf, J. Zuntz

TL;DR
This paper measures galaxy-galaxy lensing using the DES DMASS sample, tests for systematics, and constrains the galaxy-matter cross-correlation, demonstrating DMASS as a viable CMASS analog for cosmological studies.
Contribution
It provides the first detailed galaxy-galaxy lensing measurement with DMASS, assessing its effectiveness as a CMASS equivalent and constraining the galaxy-matter cross-correlation coefficient.
Findings
Significant detection of galaxy-galaxy lensing with S/N=25.7.
Estimated galaxy-matter cross-correlation coefficient r_cc≈1.06.
Results are consistent with DMASS being a good proxy for CMASS.
Abstract
The DMASS sample is a photometric sample from the DES Year 1 data set designed to replicate the properties of the CMASS sample from BOSS, in support of a joint analysis of DES and BOSS beyond the small overlapping area. In this paper, we present the measurement of galaxy-galaxy lensing using the DMASS sample as gravitational lenses in the DES Y1 imaging data. We test a number of potential systematics that can bias the galaxy-galaxy lensing signal, including those from shear estimation, photometric redshifts, and observing conditions. After careful systematic tests, we obtain a highly significant detection of the galaxy-galaxy lensing signal, with total . With the measured signal, we assess the feasibility of using DMASS as gravitational lenses equivalent to CMASS, by estimating the galaxy-matter cross-correlation coefficient . By jointly fitting the galaxy-galaxy…
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