Bayesian model comparison in cosmology with Population Monte Carlo
Martin Kilbinger (1,2), Darren Wraith (3,1), Christian P. Robert (3),, Karim Benabed (1), Olivier Cappe (4), Jean-Francois Cardoso (4,1), Gersende, Fort (4), Simon Prunet (1), Francois R. Bouchet (1) ((1) Institut, d'Astrophysique de Paris, (2) Shanghai Normal University

TL;DR
This paper applies Bayesian model selection using Population Monte Carlo to compare cosmological models, demonstrating the method's efficiency and robustness in analyzing data from CMB, SNIa, and BAO observations.
Contribution
It introduces and validates Population Monte Carlo as a reliable, efficient alternative for Bayesian evidence calculation in cosmology.
Findings
Curved universe is moderately to strongly disfavoured.
Weak preference for a running spectral index.
Tensor modes are not detected with current data.
Abstract
We use Bayesian model selection techniques to test extensions of the standard flat LambdaCDM paradigm. Dark-energy and curvature scenarios, and primordial perturbation models are considered. To that end, we calculate the Bayesian evidence in favour of each model using Population Monte Carlo (PMC), a new adaptive sampling technique which was recently applied in a cosmological context. The Bayesian evidence is immediately available from the PMC sample used for parameter estimation without further computational effort, and it comes with an associated error evaluation. Besides, it provides an unbiased estimator of the evidence after any fixed number of iterations and it is naturally parallelizable, in contrast with MCMC and nested sampling methods. By comparison with analytical predictions for simulated data, we show that our results obtained with PMC are reliable and robust. The…
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