Likelihood-free Forward Modeling for Cluster Weak Lensing and Cosmology
Sut-Ieng Tam, Keiichi Umetsu, Adam Amara

TL;DR
This paper demonstrates the application of likelihood-free forward modeling methods, ABC and DELFI, for Bayesian cosmological inference using cluster weak lensing data, effectively accounting for complex physical and observational effects.
Contribution
It introduces a novel analysis framework employing likelihood-free methods for cosmological parameter inference from cluster weak lensing, validated with synthetic eROSITA-like survey data.
Findings
DELFI yields narrower posterior constraints than ABC.
Both methods successfully recover the input cosmological parameters.
The framework is promising for upcoming large-scale surveys.
Abstract
Likelihood-free inference provides a rigorous approach to preform Bayesian analysis using forward simulations only. The main advantage of likelihood-free methods is its ability to account for complex physical processes and observational effects in forward simulations. Here we explore the potential of likelihood-free forward modeling for Bayesian cosmological inference using the redshift evolution of the cluster abundance combined with weak-lensing mass calibration. We use two complementary likelihood-free methods, namely Approximate Bayesian Computation (ABC) and Density-Estimation Likelihood-Free Inference (DELFI), to develop an analysis procedure for inference of the cosmological parameters and the mass scale of the survey sample. Adopting an eROSITA-like selection function and a 10-percent scatter in the observable-mass relation in a flat CDM…
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