The relative abundance of compact and normal massive early-type galaxies and its evolution from redshift z~2 to the present
P. Cassata (1), M. Giavalisco (1), Yicheng Guo (1), A. Renzini (2), H., Ferguson (3), A. M. Koekemoer (3), S. Salimbeni (1), C. Scarlata (4), N. A., Grogin (3), C. J. Conselice (5), T. Dahlen (3), J. M. Lotz (3), M. Dickinson, (6), and Lihwai Lin (7) ((1) Department of Astronomy

TL;DR
This study investigates the evolution of the number density and sizes of massive early-type galaxies from redshift z~2 to the present, revealing significant size growth and formation patterns over cosmic time.
Contribution
It provides a comprehensive analysis of the size evolution and number density increase of early-type galaxies across 0<z<2.5 using multi-band HST imaging and spectroscopic data.
Findings
Mass-size relation evolves significantly over redshift.
Number density of passive ETGs increases by a factor of 5 from z~2 to z~1.
Compact ETGs grow in size and new large ETGs form at z<1.
Abstract
We report on the evolution of the number density and size of early-type galaxies from z~2 to z~0. We select a sample of 563 massive (M>10^{10} Msun), passively evolving (SSFR<10^{-2} Gyr^{-1}) and morphologically spheroidal galaxies at 0<z<2.5, using the panchromatic photometry and spectroscopic redshifts available in the GOODS fields. We combine ACS and WFC3 HST images to study the morphology of our galaxies in their optical rest-frame in the whole 0<z<2.5 range. We find that throughout the explored redshift range the passive galaxies selected with our criteria have weak morphological K-correction, with size being slightly smaller in the optical than in the UV rest-frame (by ~20 and ~10 at z>1.2 and z<1.2, respectively). We measure a significant evolution of the mass-size relation of early-type galaxies, with the fractional increment that is almost independent on the stellar mass.…
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