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Cosmology with Persistent Homology: Parameter Inference via Machine Learning

Journal of Cosmology and Astroparticle Physics (JCAP), 2024
Main:24 Pages
10 Figures
Bibliography:7 Pages
4 Tables
Abstract

Building upon [2308.02636], this article investigates the potential constraining power of persistent homology for cosmological parameters and primordial non-Gaussianity amplitudes in a likelihood-free inference pipeline. We evaluate the ability of persistence images (PIs) to infer parameters, compared to the combined Power Spectrum and Bispectrum (PS/BS), and we compare two types of models: neural-based, and tree-based. PIs consistently lead to better predictions compared to the combined PS/BS when the parameters can be constrained (i.e., for {Ωm,σ8,ns,fNLloc}\{\Omega_{\rm m}, \sigma_8, n_{\rm s}, f_{\rm NL}^{\rm loc}\}). PIs perform particularly well for fNLlocf_{\rm NL}^{\rm loc}, showing the promise of persistent homology in constraining primordial non-Gaussianity. Our results show that combining PIs with PS/BS provides only marginal gains, indicating that the PS/BS contains little extra or complementary information to the PIs. Finally, we provide a visualization of the most important topological features for fNLlocf_{\rm NL}^{\rm loc} and for Ωm\Omega_{\rm m}. This reveals that clusters and voids (0-cycles and 2-cycles) are most informative for Ωm\Omega_{\rm m}, while fNLlocf_{\rm NL}^{\rm loc} uses the filaments (1-cycles) in addition to the other two types of topological features.

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