Cosmological Evidence Modelling: a new simulation-based approach to constrain cosmology on non-linear scales
Johannes U. Lange, Frank C. van den Bosch, Andrew R. Zentner, Kuan, Wang, Andrew P. Hearin, Hong Guo

TL;DR
This paper introduces Cosmological Evidence Modelling (CEM), a novel simulation-based method that directly relates Bayesian evidence to cosmological parameters, enabling more accurate and efficient inference on non-linear scales without extensive emulation of summary statistics.
Contribution
The paper presents CEM, a new approach that models the evidence dependence on cosmology, reducing the need for large simulation sets and complex galaxy-halo connection marginalization.
Findings
CEM successfully relates evidence to cosmological parameters using simulations.
CEM reduces the number of simulations needed for accurate inference.
The method accounts for galaxy assembly bias effects.
Abstract
Extracting accurate cosmological information from galaxy-galaxy and galaxy-matter correlation functions on non-linear scales () requires cosmological simulations. Additionally, one has to marginalise over several nuisance parameters of the galaxy-halo connection. However, the computational cost of such simulations prohibits naive implementations of stochastic posterior sampling methods like Markov chain Monte Carlo (MCMC) that would require of order samples in cosmological parameter space. Several groups have proposed surrogate models as a solution: a so-called emulator is trained to reproduce observables for a limited number of realisations in parameter space. Afterwards, this emulator is used as a surrogate model in an MCMC analysis. Here, we demonstrate a different method called Cosmological Evidence Modelling (CEM). First, for…
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