SimBIG: Field-level Simulation-Based Inference of Galaxy Clustering
Pablo Lemos, Liam Parker, ChangHoon Hahn, Shirley Ho, Michael, Eickenberg, Jiamin Hou, Elena Massara, Chirag Modi, Azadeh Moradinezhad, Dizgah, Bruno Regaldo-Saint Blancard, David Spergel

TL;DR
This paper introduces SimBIG, a simulation-based inference framework using normalizing flows and neural networks to extract non-Gaussian information from galaxy clustering data, resulting in tighter cosmological constraints.
Contribution
It presents the first SBI approach for galaxy clustering analysis that captures non-linear features, improving parameter constraints over traditional methods.
Findings
Constraints on $\sigma_8$ are 2.65 times tighter than standard methods.
Achieved unbiased cosmological constraints from different forward models.
Provided competitive constraints on $\Omega_m$ and $H_0$ from galaxy data.
Abstract
We present the first simulation-based inference (SBI) of cosmological parameters from field-level analysis of galaxy clustering. Standard galaxy clustering analyses rely on analyzing summary statistics, such as the power spectrum, , with analytic models based on perturbation theory. Consequently, they do not fully exploit the non-linear and non-Gaussian features of the galaxy distribution. To address these limitations, we use the {\sc SimBIG} forward modelling framework to perform SBI using normalizing flows. We apply SimBIG to a subset of the BOSS CMASS galaxy sample using a convolutional neural network with stochastic weight averaging to perform massive data compression of the galaxy field. We infer constraints on and . While our constraints on are in-line with standard analyses, those…
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Taxonomy
TopicsMental Health Research Topics · Gaussian Processes and Bayesian Inference · Data Visualization and Analytics
MethodsStochastic Weight Averaging
