Extreme Value Statistics of the Halo and Stellar Mass Distributions at High Redshift: are JWST Results in Tension with ΛCDM?

Authors: Christopher C. Lovell, Ian Harrison, Yuichi Harikane, Sandro Tacchella, Stephen M. Wilkins

arXiv: 2208.10479v2 - DOI (astro-ph.GA)
11 pages, 7 figures, Accepted to MNRAS
License: CC BY 4.0

Abstract: The distribution of dark matter halo masses can be accurately predicted in the $\Lambda$CDM cosmology. The presence of a single massive halo or galaxy at a particular redshift, assuming some baryon and stellar fraction for the latter, can therefore be used to test the underlying cosmological model. A number of recent measurements of very large galaxy stellar masses at high redshift ($z > 8$) motivate an investigation into whether any of these objects are in tension with $\Lambda$CDM. We use extreme value statistics to generate confidence regions in the mass-redshift plane for the most extreme mass haloes and galaxies. Tests against numerical models show no tension, neither in their dark matter halo masses nor their galaxy stellar masses. However, we find tentative $> 3\sigma$ tension with recent observational determinations of galaxy masses at high redshift from both HST & JWST, despite using conservative estimates for the stellar fraction ($f_{\star} \sim 1$). Either these galaxies are in tension with $\Lambda$CDM, or there are unaccounted for uncertainties in their stellar mass or redshift estimates.

Submitted to arXiv on 22 Aug. 2022

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