English

Sensitivity Analysis of Simulation-Based Inference for Galaxy Clustering

Cosmology and Nongalactic Astrophysics 2023-09-27 v1

Abstract

Simulation-based inference (SBI) is a promising approach to leverage high fidelity cosmological simulations and extract information from the non-Gaussian, non-linear scales that cannot be modeled analytically. However, scaling SBI to the next generation of cosmological surveys faces the computational challenge of requiring a large number of accurate simulations over a wide range of cosmologies, while simultaneously encompassing large cosmological volumes at high resolution. This challenge can potentially be mitigated by balancing the accuracy and computational cost for different components of the the forward model while ensuring robust inference. To guide our steps in this, we perform a sensitivity analysis of SBI for galaxy clustering on various components of the cosmological simulations: gravity model, halo-finder and the galaxy-halo distribution models (halo-occupation distribution, HOD). We infer the σ8\sigma_8 and Ωm\Omega_m using galaxy power spectrum multipoles and the bispectrum monopole assuming a galaxy number density expected from the luminous red galaxies observed using the Dark Energy Spectroscopy Instrument (DESI). We find that SBI is insensitive to changing gravity model between NN-body simulations and particle mesh (PM) simulations. However, changing the halo-finder from friends-of-friends (FoF) to Rockstar can lead to biased estimate of σ8\sigma_8 based on the bispectrum. For galaxy models, training SBI on more complex HOD leads to consistent inference for less complex HOD models, but SBI trained on simpler HOD models fails when applied to analyze data from a more complex HOD model. Based on our results, we discuss the outlook on cosmological simulations with a focus on applying SBI approaches to future galaxy surveys.

Keywords

Cite

@article{arxiv.2309.15071,
  title  = {Sensitivity Analysis of Simulation-Based Inference for Galaxy Clustering},
  author = {Chirag Modi and Shivam Pandey and Matthew Ho and ChangHoon Hahn and Bruno R'egaldo-Saint Blancard and Benjamin Wandelt},
  journal= {arXiv preprint arXiv:2309.15071},
  year   = {2023}
}

Comments

11 pages, 5 figures. Comments welcome

R2 v1 2026-06-28T12:32:56.766Z