The Evolution of the Galaxy Rest-Frame Ultraviolet Luminosity Function Over the First Two Billion Years
Steven L. Finkelstein (UT Austin), Russell E. Ryan Jr. (STScI), Casey, Papovich (Texas A&M), Mark Dickinson (NOAO), Mimi Song (UT Austin), Rachel, Somerville (Rutgers), Henry C. Ferguson (STScI), Brett Salmon (Texas A&M),, Mauro Giavalisco (UMass), Anton M. Koekemoer (STScI)

TL;DR
This study measures the UV luminosity function of galaxies at redshifts 4-8 using deep Hubble data, revealing a higher abundance of bright galaxies at high redshift and implications for galaxy evolution and reionization.
Contribution
It provides the first robust measurement of the UV luminosity function at z=4-8 with a large galaxy sample, highlighting a higher abundance of bright galaxies at z>6 and refining models of galaxy evolution.
Findings
Higher abundance of UV-bright galaxies at z>6.
Single power-law fits at z=8 suggest no bright-end cutoff.
Decline in star-formation rate density as (1+z)^(-4.3) at z>4.
Abstract
We present a robust measurement and analysis of the rest-frame ultraviolet (UV) luminosity function at z=4-8. We use deep Hubble Space Telescope imaging over the CANDELS/GOODS fields, the Hubble Ultra Deep Field and the Year 1 Hubble Frontier Field deep parallel observations. These surveys provides an effective volume of 0.6-1.2 x 10^6 Mpc^3 over this epoch, allowing us to perform a robust search for faint (M_UV=-18) and bright (M_UV < -21) galaxies. We select candidate galaxies using a well-tested photometric redshift technique with careful screening of contaminants, finding a sample of 7446 galaxies at 3.5<z<8.5, with >1000 galaxies at z~6-8. We measure the luminosity function using a Markov Chain Monte Carlo analysis to measure robust uncertainties. At the faint end our results agree with previous studies, yet we find a higher abundance of UV-bright galaxies at z>6, with M* ~ -21 at…
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