COSMOS morphological classification with ZEST (the Zurich Estimator of Structural Types) and the evolution since z=1 of the Luminosity Function of early-, disk-, and irregular galaxies
C. Scarlata, C. M. Carollo, S.J. Lilly, M. T. Sargent, R. Feldmann, P., Kampczyk, C. Porciani, A. Koekemoer, N. Scoville, J-P. Kneib, A. Leauthaud,, R. Massey, J. Rhodes, L. Tasca, P. Capak, C. Maier, H. J. McCracken, B., Mobasher, A. Renzini, Y. Taniguchi, D. Thompson, K. Sheth

TL;DR
The paper introduces ZEST, an automated galaxy classification method using multiple diagnostics and PCA, and studies the evolution of galaxy luminosity functions since z=1, revealing trends consistent with galaxy formation downsizing.
Contribution
ZEST provides a robust, automated classification of galaxy structures using PCA on multiple diagnostics, improving over previous methods.
Findings
Luminosity functions evolve mainly through pure luminosity evolution up to z=1.
Early-type galaxies show a deficit at z~0.7.
Irregular galaxies are more abundant at z~0.7.
Abstract
(ABRIDGED) Motivated by the desire to reliably and automatically classify structure of thousands of COSMOS galaxies, we present ZEST, the Zurich Estimator of Structural Types. To classify galaxy structure, ZEST uses: (i) Five non-parametric diagnostics: asymmetry, concentration, Gini coefficient, 2nd-order moment of the brightest 20% of galaxy pixels, and ellipticity; and (ii) The exponent n of single--Sersic fits to the 2D surface brightness distributions. To fully exploit the wealth of information while reducing the redundancy present in these diagnostics, ZEST performs a principal component (PC) Analysis. We use a sample of ~56,000 I<24 COSMOS galaxies to show that the first three PCs fully describe the key aspects of the galaxy structure, i.e., to calibrate a three-dimensional classification grid of axis PC_1, PC_2, and PC_3. We demonstrate the robustness of the ZEST grid on the z=0…
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Taxonomy
TopicsData Visualization and Analytics · Remote Sensing in Agriculture · Astronomy and Astrophysical Research
