Stellar masses from the CANDELS survey: the GOODS-South and UDS fields
P. Santini, H. C. Ferguson, A. Fontana, B. Mobasher, G. Barro, M., Castellano, S. L. Finkelstein, A. Grazian, L. T. Hsu, B. Lee, S.-K. Lee, J., Pforr, M. Salvato, T. Wiklind, S. Wuyts, O. Almaini, M. C. Cooper, A., Galametz, B. Weiner, R. Amorin, K. Boutsia, C. J. Conselice

TL;DR
This paper provides publicly available stellar mass catalogs for the GOODS-S and UDS fields from the CANDELS survey, analyzing the effects of different assumptions on stellar mass estimates using multiple teams' methods.
Contribution
It introduces a combined stellar mass catalog derived from multiple fitting approaches, highlighting the impact of stellar isochrone choices and nebular emission on mass estimates.
Findings
Stellar isochrone choice significantly affects mass estimates.
Mass estimates are generally insensitive to star formation history parameterizations.
Ignoring nebular emission can lead to large overestimations for young, high-redshift galaxies.
Abstract
We present the public release of the stellar mass catalogs for the GOODS-S and UDS fields obtained using some of the deepest near-IR images available, achieved as part of the Cosmic Assembly Near-infrared Deep Extragalactic Legacy Survey (CANDELS) project. We combine the effort from ten different teams, who computed the stellar masses using the same photometry and the same redshifts. Each team adopted their preferred fitting code, assumptions, priors, and parameter grid. The combination of results using the same underlying stellar isochrones reduces the systematics associated with the fitting code and other choices. Thanks to the availability of different estimates, we can test the effect of some specific parameters and assumptions on the stellar mass estimate. The choice of the stellar isochrone library turns out to have the largest effect on the galaxy stellar mass estimates,…
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