Quijote-PNG: The Information Content of the Halo Mass Function
Abstract
We study signatures of primordial non-Gaussianity (PNG) in the redshift-space halo field on non-linear scales, using a combination of three summary statistics, namely the halo mass function (HMF), power spectrum, and bispectrum. The choice of adding the HMF to our previous joint analysis of power spectrum and bispectrum is driven by a preliminary field-level analysis, in which we train graph neural networks on halo catalogues to infer the PNG fNL parameter. The covariance matrix and the responses of our summaries to changes in model parameters are extracted from a suite of halo catalogues constructed from the Quijote-PNG N-body simulations. We consider the three main types of PNG: local, equilateral and orthogonal. Adding the HMF to our previous joint analysis of power spectrum and bispectrum produces two main effects. First, it reduces the equilateral fNL predicted errors by roughly a factor 2, while also producing notable, although smaller, improvements for orthogonal PNG. Second, it helps break the degeneracy between the local PNG amplitude, fNLlocal, and assembly bias, bφ, without relying on any external prior assumption. Our final forecasts for PNG parameters are fNLlocal = 40, fNLequil = 210, fNLortho = 91, on a cubic volume of 1 (h-1 Gpc)3, with a halo number density of n 5.1 × 10-5~h3Mpc-3, at z = 1, and considering scales up to kmax = 0.5~h\,Mpc-1.
Turn this paper into a lesson
ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.