How Much Information Can Be Extracted from Galaxy Clustering at the Field Level?
We present optimal Bayesian field-level cosmological constraints from nonlinear tracers of cosmic large-scale structure, specifically the amplitude σ_{8} of linear matter fluctuations inferred from rest-frame simulated dark matter halos in a comoving volume of 8 (h^{-1} Gpc)^{3}. Our constraint on...
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Veröffentlicht in: | Physical review letters 2024-11, Vol.133 (22), p.221006, Article 221006 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | We present optimal Bayesian field-level cosmological constraints from nonlinear tracers of cosmic large-scale structure, specifically the amplitude σ_{8} of linear matter fluctuations inferred from rest-frame simulated dark matter halos in a comoving volume of 8 (h^{-1} Gpc)^{3}. Our constraint on σ_{8} is entirely due to nonlinear information, and obtained by explicitly sampling the initial conditions along with tracer bias and noise parameters via a Lagrangian effective field theory-based forward model, leftfield. The comparison with a simulation-based inference of the power spectrum and bispectrum-likewise using the leftfield forward model-shows that, when including precisely the same modes of the same data up to k_{max}=0.10 h Mpc^{-1} (0.12 h Mpc^{-1}), the field-level approach yields a factor of 3.5 (5.2) improvement in the σ_{8} constraint, going from 20.0% to 5.7% (17.0% to 3.3%). This study provides direct insights into cosmological information encoded in galaxy clustering beyond low-order n-point functions. |
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ISSN: | 0031-9007 1079-7114 1079-7114 |
DOI: | 10.1103/PhysRevLett.133.221006 |