Z > 7 galaxies with red Spitzer/IRAC [3.6]-[4.5] colors in the full CANDELS data set: the brightest-known galaxies at Z ~ 7-9 and a probable spectroscopic confirmation at Z=7.48
G. W. Roberts-Borsani, R. J. Bouwens, P. A. Oesch, I. Labbe, R. Smit,, G. D. Illingworth, P. van Dokkum, B. Holden, V. Gonzalez, M. Stefanon, B., Holwerda, S. Wilkins

TL;DR
This paper identifies and spectroscopically confirms four exceptionally bright galaxies at redshifts 7-9 using a novel IRAC color selection method, revealing the brightest known galaxies at these epochs and implications for galaxy luminosity functions.
Contribution
Introduces a new IRAC color-based selection strategy for high-redshift galaxies, validated with Y-band data, leading to discovery of the brightest galaxies at z > 7.
Findings
Discovered four bright z ~ 7-9 galaxies with IRAC color criteria.
Spectroscopic confirmation of three galaxies at z=7.477, 7.730, and 8.683.
These galaxies are more luminous than any previously known at similar redshifts.
Abstract
We identify 4 unusually bright (H < 25.5) galaxies from HST and Spitzer CANDELS data with probable redshifts z ~ 7-9. These identifications include the brightest-known galaxies to date at z > 7.5. As Y-band observations are not available over the full CANDELS program to perform a standard Lyman-break selection of z > 7 galaxies, we employ an alternate strategy using deep Spitzer/IRAC data. We identify z ~ 7.1 - 9.1 galaxies by selecting z >~ 6 galaxies from the HST CANDELS data that show quite red IRAC [3.6]-[4.5] colors, indicating strong [OIII]+Hbeta lines in the 4.5 micron band. This selection strategy was validated using a modest sample for which we have deep Y-band coverage, and subsequently used to select the brightest z > 7 sources. Applying the IRAC criteria to all HST-selected optical-dropout galaxies over the full ~900 arcmin**2 of the CANDELS survey revealed four unusually…
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