Quijote-PNG: Quasi-maximum likelihood estimation of Primordial Non-Gaussianity in the non-linear dark matter density field
Gabriel Jung, Dionysios Karagiannis, Michele Liguori, Marco Baldi,, William R Coulton, Drew Jamieson, Licia Verde, Francisco Villaescusa-Navarro, and Benjamin D. Wandelt

TL;DR
This paper introduces a new simulation-based estimator that combines power spectrum and bispectrum measurements to effectively extract primordial non-Gaussianity signals from non-linear dark matter density fields, improving constraints on early Universe physics.
Contribution
The authors develop and validate a novel, optimal joint estimation method for PNG and cosmological parameters using compressed statistics from N-body simulations, extending analysis into non-linear scales.
Findings
Power spectrum adds significant PNG information to bispectrum analysis.
The method achieves constraints of Δf_NL ~ 16 (local), 77 (equilateral), 40 (orthogonal).
Estimates remain unbiased, optimal, and stable across simulation variations.
Abstract
Future Large Scale Structure surveys are expected to improve over current bounds on primordial non-Gaussianity (PNG), with a significant impact on our understanding of early Universe physics. The level of such improvements will however strongly depend on the extent to which late time non-linearities erase the PNG signal on small scales. In this work, we show how much primordial information remains in the bispectrum of the non-linear dark matter density field by implementing a new, simulation-based, methodology for joint estimation of PNG amplitudes () and standard CDM parameters. The estimator is based on optimally compressed statistics, which, for a given input density field, combine power spectrum and modal bispectrum measurements, and numerically evaluate their covariance and their response to changes in cosmological parameters. We train and validate the…
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