Galaxy And Mass Assembly: Stellar Mass Estimates
Edward N Taylor, Andrew M Hopkins, Ivan K Baldry, Michael J I Brown,, Simon P Driver, Lee S Kelvin, David T Hill, Aaron S G Robotham, Joss, Bland-Hawthorn, D H Jones, R G Sharp, Daniel Thomas, Jochen Liske, Jon, Loveday, Peder Norberg, J A Peacock, Steven P Bamford, Sarah Brough

TL;DR
This paper presents a catalogue of stellar mass estimates for intermediate-redshift galaxies from the GAMA survey, highlighting the effectiveness of optical data alone for mass estimation and discussing issues with NIR data inclusion.
Contribution
The study provides the first catalogue of photometrically-derived stellar masses for GAMA galaxies and demonstrates that optical colours alone can reliably estimate stellar mass-to-light ratios.
Findings
Optical photometry alone yields reliable stellar mass estimates.
Including NIR data degrades the quality of stellar population fits.
Restframe (g-i) colour can estimate M*/Li with ~0.1 dex accuracy.
Abstract
This paper describes the first catalogue of photometrically-derived stellar mass estimates for intermediate-redshift (z < 0.65) galaxies in the Galaxy And Mass Assembly (GAMA) spectroscopic redshift survey. These masses, as well as the full set of ancillary stellar population parameters, will be made public as part of GAMA data release 2. Although the GAMA database does include NIR photometry, we show that the quality of our stellar population synthesis fits is significantly poorer when these NIR data are included. Further, for a large fraction of galaxies, the stellar population parameters inferred from the optical-plus-NIR photometry are formally inconsistent with those inferred from the optical data alone. This may indicate problems in our stellar population library, or NIR data issues, or both; these issues will be addressed for future versions of the catalogue. For now, we have…
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