MOIRCS Deep Survey. VIII. Evolution of Star Formation Activity as a Function of Stellar Mass in Galaxies since z~3
M. Kajisawa, T. Ichikawa, T. Yamada, Y. K. Uchimoto, T. Yoshikawa, M., Akiyama, M. Onodera

TL;DR
This study investigates how star formation activity in galaxies varies with stellar mass from redshift 0.5 to 3.5, revealing that higher redshift galaxies have higher star formation rates and that massive galaxies show significant evolution in their star formation activity.
Contribution
It provides a detailed analysis of the evolution of star formation rates as a function of stellar mass across a wide redshift range using deep NIR data, highlighting bimodality in SSFR at high redshift.
Findings
Star formation rates increase with redshift for fixed stellar mass.
Galaxies at z~3 show bimodal SSFR distribution.
Massive galaxies' contribution to cosmic SFRD evolves significantly at z>1.
Abstract
We study the evolution of star formation activity of galaxies at 0.5<z<3.5 as a function of stellar mass, using very deep NIR data taken with Multi-Object Infrared Camera and Spectrograph (MOIRCS) on the Subaru telescope in the GOODS-North region. The NIR imaging data reach K ~ 23-24 Vega magnitude and they allow us to construct a nearly stellar mass-limited sample down to ~ 10^{9.5-10} Msun even at z~3. We estimated star formation rates (SFRs) of the sample with two indicators, namely, the Spitzer/MIPS 24um flux and the rest-frame 2800A luminosity. The SFR distribution at a fixed Mstar shifts to higher values with increasing redshift at 0.5<z<3.5. More massive galaxies show stronger evolution of SFR at z>~1. We found galaxies at 2.5<z<3.5 show a bimodality in their SSFR distribution, which can be divided into two populations by a constant SSFR of ~2 Gyr^{-1}. Galaxies in the low-SSFR…
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