Galaxy And Mass Assembly (GAMA): Data Release 4 and the z < 0.1 total and z < 0.08 morphological galaxy stellar mass functions
Simon P. Driver, Sabine Bellstedt, Aaron S. G. Robotham, Ivan K., Baldry, Luke J. Davies, Jochen Liske, Danail Obreschkow, Edward N. Taylor,, Angus H. Wright, Mehmet Alpaslan, Steven P. Bamford, Amanda E. Bauer, Joss, Bland-Hawthorn, Maciej Bilicki, Matias Bravo, Sarah Brough

TL;DR
The GAMA DR4 release provides an extensive spectroscopic galaxy sample with high completeness, detailed morphological and stellar mass data, enabling precise measurements of galaxy stellar mass functions and insights into galaxy evolution at low redshift.
Contribution
This paper presents the fourth data release of GAMA, including new spectroscopic, morphological, and stellar mass data, and derives the total and morphological galaxy stellar mass functions at z<0.1.
Findings
High completeness spectroscopic sample over 250 deg^2
Derived galaxy stellar mass function down to 10^6.75 M_sun
Estimated stellar mass density and baryonic mass conversion efficiency
Abstract
In Galaxy And Mass Assembly Data Release 4 (GAMA DR4), we make available our full spectroscopic redshift sample. This includes 248682 galaxy spectra, and, in combination with earlier surveys, results in 330542 redshifts across five sky regions covering ~250deg^2. The redshift density, is the highest available over such a sustained area, has exceptionally high completeness (95 per cent to r_KIDS=19.65mag), and is well suited for the study of galaxy mergers, galaxy groups, and the low redshift (z<0.25) galaxy population. DR4 includes 32 value-added tables or Data Management Units (DMUs) that provide a number of measured and derived data products including GALEX, ESO KiDS, ESO VIKING, WISE and Herschel Space Observatory imaging. Within this release, we provide visual morphologies for 15330 galaxies to z<0.08, photometric redshift estimates for all 18million objects to r_KIDS~25mag, and…
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