Mass function and assembly of dark halos: an approach to inventory isolated overdense regions in random fields
C. Firmani (1,2), V. Avila-Reese (2) ((1) INAF-OAB, (2) U.N.A.M.)

TL;DR
This paper introduces a probabilistic formalism to describe the evolution of dark matter halos, reconciling theoretical models with numerical simulations by accounting for a diffuse component and mass rescaling.
Contribution
It develops a new inventory-based formalism for dark halo statistics, addressing limitations of Gaussian assumptions and improving agreement with simulations.
Findings
The formalism confirms Gaussian fields cannot simultaneously reproduce MF, MAH, and MR.
Rescaling halo masses by ~30% aligns models with simulation data.
Inclusion of diffuse dark matter component explains discrepancies in halo mass functions.
Abstract
In order to attain a statistical description of the evolution of cosmic density fluctuations in agreement with results from the numerical simulations, we introduce a probability conditional formalism (CF) based on an inventory of isolated overdense regions in a density random field. This formalism is a useful tool for describing at the same time the mass function (MF) of dark haloes, their mass aggregation histories (MAHs) and merging rates (MRs). The CF focuses on virialized regions in a self-consistent way rather than in mass elements, and it offers an economical description for a variety of random fields. Within the framework of the CF, we confirm that, for a Gaussian field, it is not possible to reproduce at the same time the MF, MAH, and MR of haloes, both for a constant and moving barrier. Then, we develop an inductive method for constraining the cumulative conditional probability…
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