Straightening the Ruler: Field-Level Inference of the BAO Scale with LEFTfield
Ivana Babi\'c, Fabian Schmidt, Beatriz Tucci

TL;DR
This paper introduces a Bayesian field-level inference method for the BAO scale using the EFT-based LEFTfield model, demonstrating improved precision and systematic bias control over traditional power spectrum approaches.
Contribution
It presents the first joint Bayesian inference of the BAO scale varying initial conditions and bias parameters with a field-level model, showing enhanced accuracy and precision.
Findings
Systematic bias in BAO scale below 2% with the new method.
Inferred error on BAO scale is 30-50% smaller than standard methods.
Field-level inference achieves comparable error bars to optimal standard approaches in linear bias cases.
Abstract
Current inferences of the BAO scale from galaxy clustering employ a reconstruction technique at fixed cosmology and bias parameters. Here, we present the first consistent joint Bayesian inference of the isotropic BAO scale, jointly varying the initial conditions as well as all bias coefficients, based on the EFT-based field-level forward model . We apply this analysis to mock data generated at a much higher cutoff, or resolution, resulting in a significant model mismatch between mock data and the model used in the inference. We demonstrate that the remaining systematic bias in the BAO scale is below 2% for all data considered and below 1% when Eulerian bias is used for inference. Furthermore, we find that the inferred error on the BAO scale is typically 30%, and up to 50%, smaller compared to that from a replication of the standard post-reconstruction power-spectrum…
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