Analysis of Unified Galaxy Power Spectrum Multipole Measurements
Jamie Donald-McCann, Rafaela Gsponer, Ruiyang Zhao, Kazuya, Koyama, Florian Beutler

TL;DR
This paper uses an emulated effective field theory model to analyze galaxy power spectrum data, improving bias mitigation and agreement with CMB results through alternative priors and model adjustments.
Contribution
It introduces a neural-network emulator for efficient large-scale structure analysis and demonstrates bias reduction with non-informative priors in galaxy survey data.
Findings
Reduced biases in cosmological parameters with alternative priors.
Improved agreement between galaxy survey and CMB constraints.
Validated analysis pipeline with synthetic and real data.
Abstract
We present a series of full-shape analyses of galaxy power spectrum multipole measurements from the 6dFGS, BOSS, and eBOSS galaxy surveys. We use an emulated effective field theory of large-scale structure (EFTofLSS) model to conduct these analyses. We exploit the accelerated prediction speed of the neural-network-based emulator to explore various analysis setups for our cosmological inference pipeline. Via a set of mock full-shape analyses of synthetic power spectrum multipoles, designed to approximate measurements from the surveys above, we demonstrate that the use of alternative priors on nuisance parameters and restricted model complexity reduces many of the biases previously observed in marginalised cosmological constraints coming from EFTofLSS analyses. The alternative priors take the form of a Jeffreys prior; a non-informative prior that can mitigate against biases induced by…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena
