Structure formation from non-Gaussian initial conditions: multivariate biasing, statistics, and comparison with N-body simulations
Tommaso Giannantonio, Cristiano Porciani (AIfA Bonn)

TL;DR
This paper develops a multivariate bias model incorporating primordial non-Gaussianity to accurately describe halo clustering and scale-dependent bias, validated against N-body simulations and useful for future galaxy survey analysis.
Contribution
Introduces a multivariate bias framework that accounts for non-Gaussian initial conditions, improving predictions of halo clustering and bias behavior.
Findings
Model accurately matches N-body simulations for k < 0.1-0.3 h/Mpc.
Scale-dependent bias arises from leading order terms in the multivariate expansion.
Halo bispectrum is a sensitive probe for primordial non-Gaussianity.
Abstract
We study structure formation in the presence of primordial non-Gaussianity of the local type with parameters f_NL and g_NL. We show that the distribution of dark-matter halos is naturally described by a multivariate bias scheme where the halo overdensity depends not only on the underlying matter density fluctuation delta, but also on the Gaussian part of the primordial gravitational potential phi. This corresponds to a non-local bias scheme in terms of delta only. We derive the coefficients of the bias expansion as a function of the halo mass by applying the peak-background split to common parametrizations for the halo mass function in the non-Gaussian scenario. We then compute the halo power spectrum and halo-matter cross spectrum in the framework of Eulerian perturbation theory up to third order. Comparing our results against N-body simulations, we find that our model accurately…
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