S IMBIG: A Forward Modeling Approach To Analyzing Galaxy Clustering
Abstract
We present the first-ever cosmological constraints from a simulation-based inference (SBI) analysis of galaxy clustering from the new S IMBIG forward modeling framework. S IMBIG leverages the predictive power of high-fidelity simulations and provides an inference framework that can extract cosmological information on small non-linear scales, inaccessible with standard analyses. In this work, we apply S IMBIG to the BOSS CMASS galaxy sample and analyze the power spectrum, P(k), to k max=0.5\,h/ Mpc. We construct 20,000 simulated galaxy samples using our forward model, which is based on high-resolution Q UIJOTE N-body simulations and includes detailed survey realism for a more complete treatment of observational systematics. We then conduct SBI by training normalizing flows using the simulated samples and infer the posterior distribution of cosmological parameters: m, b, h, ns, σ8. We derive significant constraints on m and σ8, which are consistent with previous works. Our constraints on σ8 are 27\% more precise than standard analyses. This improvement is equivalent to the statistical gain expected from analyzing a galaxy sample that is 60\% larger than CMASS with standard methods. It results from additional cosmological information on non-linear scales beyond the limit of current analytic models, k > 0.25\,h/ Mpc. While we focus on P in this work for validation and comparison to the literature, S IMBIG provides a framework for analyzing galaxy clustering using any summary statistic. We expect further improvements on cosmological constraints from subsequent S IMBIG analyses of summary statistics beyond P.
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