4.7 Article

Cosmological Evidence Modelling: a new simulation-based approach to constrain cosmology on non-linear scales

Journal

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
Volume 490, Issue 2, Pages 1870-1878

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stz2664

Keywords

methods: statistical; cosmological parameters; large-scale structure of Universe

Funding

  1. Office of Science of the U.S. Department of Energy [DE-AC02-05CH11231]
  2. Stanford University
  3. Stanford Research Computing Center
  4. US National Science Foundation (NSF) [AST 1516962]
  5. HPC
  6. Klaus Tschira foundation
  7. National Aeronautics and Space Administration [17-ATP17-0028]
  8. NSF [AST 1517563]
  9. Pittsburgh Particle Physics Astrophysics and Cosmology Center (PITT PACC) at the University of Pittsburgh
  10. National Key Basic Research Program of China [2015CB857003]
  11. National Science Foundation of China [11833005, 11828302, 11773049]
  12. DOE [DE-AC02-06CH11357]

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Extracting accurate cosmological information from galaxy-galaxy and galaxy-matter correlation functions on non-linear scales (less than or similar to 10 h(-1) Mpc) requires cosmological simulations. Additionally, one has to marginalize 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 O(10(6)) 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 realizations 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 each simulation, we calculate the Bayesian evidence marginalized over the galaxy-halo connection by repeatedly populating the simulation with galaxies, We show that this Bayesian evidence is directly related to the posterior probability of cosmological parameters, Finally, we build a physically motivated model for how the evidence depends on cosmological parameters as sampled by the simulations, We demonstrate the feasibility of CEM by using simulations from the Aemulus simulation suite and forecasting cosmological constraints from BOSS CMASS measurements of redshift-space distortions. Our analysis includes exploration of how galaxy assembly bias affects cosmological inference, Overall, CEM has several potential advantages over the more common approach of emulating summary statistics, including the ability to easily marginalize over highly complex models of the galaxy-halo connection and greater accuracy, thereby reducing the number of simulations required.

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