The ALHAMBRA survey: evolution of galaxy spectral segregation
Ll. Hurtado-Gil, P. Arnalte-Mur, V.J. Mart\'inez, A. Fern\'andez-Soto,, M. Stefanon, B. Ascaso, C. L\'opez-Sanjuan, I. M\'arquez, M. Povic, K., Viironen, J. A. L. Aguerri, E. Alfaro, T. Aparicio-Villegas, N. Ben\'itez, T., Broadhurst, J. Cabrera-Ca\~no, F. J. Castander, J. Cepa

TL;DR
This study analyzes galaxy clustering evolution based on spectral type and redshift using ALHAMBRA survey data, revealing distinct clustering behaviors for quiescent and star-forming galaxies and confirming the color-density relation.
Contribution
It provides the first detailed analysis of galaxy spectral segregation evolution over redshift using the ALHAMBRA survey data, highlighting differences in clustering and bias.
Findings
Quiescent galaxies show stronger clustering with little evolution over redshift.
Star-forming galaxies exhibit weaker clustering and significant evolution.
Clustering differences support the color-density relation in galaxy formation.
Abstract
We study the clustering of galaxies as a function of spectral type and redshift in the range using data from the Advanced Large Homogeneous Area Medium Band Redshift Astronomical (ALHAMBRA) survey. The data cover 2.381 deg in 7 fields, after applying a detailed angular selection mask, with accurate photometric redshifts [] down to . From this catalog we draw five fixed number density, redshift-limited bins. We estimate the clustering evolution for two different spectral populations selected using the ALHAMBRA-based photometric templates: quiescent and star-forming galaxies. For each sample, we measure the real-space clustering using the projected correlation function. Our calculations are performed over the range Mpc, allowing us to find a steeper trend for Mpc, which is especially…
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