Superdense galaxies and the mass-size relation at low redshift
Bianca Poggianti, Rosa Calvi, Daniele Bindoni, Mauro D'Onofrio,, Alessia Moretti, Tiziano Valentinuzzi, Gianni Fasano, Jacopo Fritz, Gabriella, De Lucia, Benedetta Vulcani, Daniela Bettoni, Marco Gullieuszik, Alessandro, Omizzolo

TL;DR
This study identifies and characterizes superdense galaxies in the local universe, revealing their properties, environmental dependence, and implications for galaxy evolution, suggesting mild size evolution from high redshift.
Contribution
It provides the first comprehensive analysis of superdense galaxies at low redshift, highlighting their prevalence, properties, and environmental differences, and discusses their evolutionary links to high-z galaxies.
Findings
Superdense galaxies constitute 4.4% of massive galaxies in the local field.
Cluster superdense galaxies are three times more common and older than in the field.
The average size evolution from high to low redshift is approximately a factor of 1.6.
Abstract
We search for massive and compact galaxies (superdense galaxies, hereafter SDGs) at z=0.03-0.11 in the Padova-Millennium Galaxy and Group Catalogue, a spectroscopically complete sample representative of the local Universe general field population. We find that compact galaxies with radii and mass densities comparable to high-z massive and passive galaxies represent 4.4% of all galaxies with stellar masses above 3 X 10^10 M_sun, yielding a number density of 4.3 X 10^-4 h^3 Mpc^-3. Most of them are S0s (70%) or ellipticals (23%), are red and have intermediate-to-old stellar populations, with a median luminosity-weighted age of 5.4 Gyr and a median mass-weighted age of 9.2 Gyr. Their velocity dispersions and dynamical masses are consistent with the small radii and high stellar mass estimates. Comparing with the WINGS sample of cluster galaxies at similar redshifts, the fraction of…
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