Optimal Constraints on Local Primordial Non-Gaussianity from the Two-Point Statistics of Large-Scale Structure
Nico Hamaus, Uros Seljak, Vincent Desjacques

TL;DR
This paper demonstrates that combining optimal weighting and multi-tracer techniques significantly enhances the ability to constrain local primordial non-Gaussianity from large-scale structure data, potentially reaching unprecedented precision.
Contribution
It introduces a combined approach using optimal weighting and multi-tracer methods to improve constraints on primordial non-Gaussianity from two-point statistics.
Findings
Up to tenfold improvement in f_NL constraints with combined methods.
Forecasted constraints of σ_fNL~1 for large future surveys.
Agreement between numerical results and halo model predictions.
Abstract
One of the main signatures of primordial non-Gaussianity of the local type is a scale-dependent correction to the bias of large-scale structure tracers such as galaxies or clusters, whose amplitude depends on the bias of the tracers itself. The dominant source of noise in the power spectrum of the tracers is caused by sampling variance on large scales (where the non-Gaussian signal is strongest) and shot noise arising from their discrete nature. Recent work has argued that one can avoid sampling variance by comparing multiple tracers of different bias, and suppress shot noise by optimally weighting halos of different mass. Here we combine these ideas and investigate how well the signatures of non-Gaussian fluctuations in the primordial potential can be extracted from the two-point correlations of halos and dark matter. On the basis of large -body simulations with local non-Gaussian…
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