Galaxy And Mass Assembly: Deconstructing Bimodality - I. Red ones and blue ones
Edward N. Taylor, Andrew M. Hopkins, Ivan K. Baldry, Joss, Bland-Hawthorn, Michael J.I. Brown, Matthew Colless, Simon Driver, Peder, Norberg, Aaron S.G. Robotham, Mehmet Alpaslan, Sarah Brough, Michelle E., Cluver, Madusha Gunawhardhana, Lee S. Kelvin, Jochen Liske

TL;DR
This study measures and models the mass functions of red and blue galaxies in the local universe, providing objective definitions and insights into their properties and evolution, especially at low masses.
Contribution
It introduces a novel modeling approach that treats red and blue galaxies as overlapping populations, enabling objective classification and detailed analysis of their mass functions and colour-mass relations.
Findings
Blue galaxy colours are largely independent of mass after dust correction.
The 'dead sequence' of galaxies does not extend below log M* ~ 10.5.
Red galaxy colours vary strongly with mass, especially at lower masses.
Abstract
We measure the mass functions for generically red and blue galaxies, using a z < 0.12 sample of log M* > 8.7 field galaxies from the Galaxy And Mass Assembly (GAMA) survey. Our motivation is that, as we show, the dominant uncertainty in existing measurements stems from how 'red' and 'blue' galaxies have been selected/defined. Accordingly, we model our data as two naturally overlapping populations, each with their own mass function and colour-mass relation, which enables us characterise the two populations without having to specify a priori which galaxies are 'red' and 'blue'. Our results then provide the means to derive objective operational definitions for the terms 'red' and 'blue', which are based on the phenomenology of the colour-mass diagrams. Informed by this descriptive modelling, we show that: 1.) after accounting for dust, the stellar colours of 'blue' galaxies do not depend…
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