Modeling galaxy clustering on small scales to tighten constraints on dark energy and modified gravity
Yun Wang

TL;DR
This paper introduces a new method for analyzing small-scale galaxy clustering to improve measurements of cosmic expansion and structure growth, leading to tighter constraints on dark energy and modified gravity theories.
Contribution
The paper develops and validates a novel empirical modeling approach for small-scale galaxy clustering, enhancing the precision of cosmological parameter measurements.
Findings
Achieved 1.3% precision on H(z)r_s(z_d)/c
Obtained 0.8% precision on D_A(z)/r_s(z_d)
Measured growth rate f_g(z)σ_8(z) with 10.5% accuracy
Abstract
We present a new approach to measuring cosmic expansion history and growth rate of large scale structure using the anisotropic two dimensional galaxy correlation function (2DCF) measured from data; it makes use of the empirical modeling of small-scale galaxy clustering derived from numerical simulations by Zheng et al. (2013). We validate this method using mock catalogues, before applying it to the analysis of the CMASS sample from the Sloan Digital Sky Survey Data Release 10 (DR10) of the Baryon Oscillation Spectroscopic Survey (BOSS). We find that this method enables accurate and precise measurements of cosmic expansion history and growth rate of large scale structure. Modeling the 2DCF fully including nonlinear effects and redshift space distortions (RSD) in the scale range of 16 to 144 Mpc/h, we find H(0.57)r_s(z_d)/c=0.0459 +/- 0.0006, D_A(0.57)/r_s(z_d)=9.011 +/- 0.073, and…
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