The impact of mass-dependent stochasticity at cosmic dawn
Viola Gelli, Charlotte Mason, Christopher C. Hayward

TL;DR
This paper models how mass-dependent stochastic star formation affects high-redshift galaxy observations, predicting increased UV luminosity functions, less clustering, and varied galaxy properties, aligning with observations up to redshift 12.
Contribution
It introduces a simple analytical model incorporating mass-dependent stochasticity, explaining high-redshift galaxy luminosity functions and related observables, and highlights the need for additional physics at very early times.
Findings
Model reproduces observed luminosity functions up to z~12.
Predicts less galaxy clustering at high redshift due to stochasticity.
Cannot fully explain luminosity functions at z~14, indicating other processes are involved.
Abstract
JWST is unveiling a surprising lack of evolution in the number densities of ultraviolet-selected (UV) galaxies at redshift . At the same time, observations and simulations are providing evidence for highly bursty star formation in high- galaxies, resulting in significant scatter in their UV luminosities. Galaxies in low-mass dark matter halos are expected to experience most stochasticity due to their shallow potential wells. Here, we explore the impact of a mass-dependent stochasticity using a simple analytical model. We assume that scatter in the relation increases towards lower halo masses, following the decrease in halo escape velocity, , independent of redshift. Since low-mass halos are more dominant in the early universe, this model naturally predicts an increase in UV luminosity functions (LFs) at high…
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Taxonomy
TopicsCosmology and Gravitation Theories · Advanced Mathematical Theories and Applications · Big Data Technologies and Applications
