Cosmological Constraints from a Combination of Galaxy Clustering and Lensing -- I. Theoretical Framework
Frank van den Bosch, Surhud More, Marcello Cacciato, Houjun Mo, Xiaohu, Yang

TL;DR
This paper introduces a comprehensive analytical framework combining the halo model and CLF to accurately predict galaxy clustering and lensing signals, tested against simulations, and addresses systematic errors in modeling and observations.
Contribution
It develops a detailed analytical model for galaxy clustering and lensing that includes scale-dependent bias and halo exclusion, improving accuracy over previous methods.
Findings
Model reproduces galaxy-galaxy and galaxy-matter correlations within 10% accuracy.
Ignoring scale-dependent bias and halo exclusion causes systematic errors over 40%.
Residual redshift space distortions can be corrected to better than 2% accuracy.
Abstract
We present a new method that simultaneously solves for cosmology and galaxy bias on non-linear scales. The method uses the halo model to analytically describe the (non-linear) matter distribution, and the conditional luminosity function (CLF) to specify the halo occupation statistics. For a given choice of cosmological parameters, this model can be used to predict the galaxy luminosity function, as well as the two-point correlation functions of galaxies, and the galaxy-galaxy lensing signal, both as function of scale and luminosity. In this paper, the first in a series, we present the detailed, analytical model, which we test against mock galaxy redshift surveys constructed from high-resolution numerical -body simulations. We demonstrate that our model, which includes scale-dependence of the halo bias and a proper treatment of halo exclusion, reproduces the 3-dimensional…
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