Advancing the matter bispectrum estimation of large-scale structure: fast prescriptions for galaxy mock catalogues
Johnathan Hung, Marc Manera, E.P.S. Shellard

TL;DR
This paper develops fast, accurate methods for generating 3D mock galaxy catalogues that match the power spectrum and bispectrum of detailed N-body simulations, improving efficiency in large-scale structure studies.
Contribution
It introduces a novel assembly bias model and compares it with traditional HOD approaches, achieving high accuracy in reproducing key statistical measures of galaxy distributions.
Findings
Power spectrum recovered within 1% accuracy
Bispectrum recovered within 4% accuracy
HOD-based schemes are less accurate for both statistics
Abstract
We investigate various phenomenological schemes for the rapid generation of 3D mock galaxy catalogues with a given power spectrum and bispectrum. We apply the fast bispectrum estimator \MODALLSS{} to these mock galaxy catalogues and compare to -body simulation data analysed with the halo-finder \texttt{ROCKSTAR} (our benchmark data). We propose an assembly bias model for populating parent halos with subhalos by using a joint lognormal-Gaussian probability distribution for the subhalo occupation number and the halo concentration. This prescription enabled us to recover the benchmark power spectrum from -body simulations to within 1\% and the bispectrum to within 4\% across the entire range of scales of the simulation. A small further boost adding an extra galaxy to all parent halos above the mass threshold obtained a better than 1\% fit to both…
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Taxonomy
TopicsBlind Source Separation Techniques · Galaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research
