Stellar mass functions of galaxies at 4<z<7 from an IRAC-selected sample in COSMOS/UltraVISTA: limits on the abundance of very massive galaxies
Mauro Stefanon (1), Danilo Marchesini (2), Adam Muzzin (3), Gabriel G., Brammer (4), James S. Dunlop (5), Marijin Franx (3), Johan P. U. Fynbo (6),, Ivo Labbe (3), Bo Milvang-Jensen (6), Pieter G. van Dokkum (7) ((1), University of Missouri - Columbia MO, USA

TL;DR
This study constructs a complete IRAC-selected galaxy catalog at 4<z<7 to analyze the evolution of massive galaxies, revealing that their abundance is highly sensitive to prior assumptions and suggesting rapid growth in the early universe.
Contribution
It introduces a comprehensive IRAC-based catalog and investigates the impact of Bayesian priors on stellar mass function estimates at high redshift, providing new insights into early galaxy growth.
Findings
The number of massive galaxies varies significantly with prior assumptions.
No evolution in the massive end of the SMF from z~6.5 to 3.5 without priors.
Rapid growth of massive galaxies inferred when priors are applied.
Abstract
We build a Spitzer IRAC complete catalog of objects, obtained by complementing the -band selected UltraVISTA catalog with objects detected in IRAC only. With the aim of identifying massive (i.e., ) galaxies at , we consider the systematic effects on the measured photometric redshifts from the introduction of an old and dusty SED template and from the introduction of a bayesian prior taking into account the brightness of the objects, as well as the systematic effects from different star formation histories (SFHs) and from nebular emission lines in the recovery of stellar population parameters. We show that our results are most affected by the bayesian luminosity prior, while nebular emission lines and SFHs only introduce a small dispersion in the measurements. Specifically, the number of galaxies ranges from 52 to 382 depending on the…
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