Fast likelihood-free inference in the LSS Stage IV era
Guillermo Franco-Abellán,
Guadalupe Cañas-Herrera,
Matteo Martinelli
et al.
Abstract:Forthcoming large-scale structure (LSS) Stage IV surveys will provide us with unprecedented data to probe the nature of dark matter and dark energy.
However, analysing these data with conventional Markov Chain Monte Carlo (MCMC) methods will be challenging, due to the increase in the number of nuisance parameters and the presence of intractable likelihoods. In light of this, we present the first application of Marginal Neural Ratio Estimation (MNRE) (a recent approach in simulation-based inference) to LSS phot… Show more
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