The LEGA-C of nature and nurture in stellar populations of galaxies at z~0.6-1.0: D4000 and H-delta reveal different assembly histories for quiescent galaxies in different environments
David Sobral, Arjen van der Wel, Rachel Bezanson, Eric Bell, Adam, Muzzin, Francesco D'Eugenio, Behnam Darvish, Anna Gallazzi, Po-Feng Wu,, Michael Maseda, Jorryt Matthee, Ana Paulino-Afonso, Caroline Straatman,, Pieter van Dokkum

TL;DR
This study uses the LEGA-C survey to analyze how galaxy stellar populations at z~0.6-1.0 vary with environment and stellar mass, revealing environment-dependent assembly histories especially for quiescent galaxies.
Contribution
It provides new insights into the environmental influence on stellar populations and galaxy assembly histories at intermediate redshifts, highlighting differences between star-forming and quiescent galaxies.
Findings
D4000 and H-delta EWs depend mainly on stellar mass.
Environmental effects are significant for quiescent galaxies.
Star-forming galaxies show no environmental dependence in their stellar populations.
Abstract
Galaxy evolution is driven by a variety of physical processes which are predicted to proceed at different rates for different dark matter haloes and environments across cosmic times. A record of this evolution is preserved in galaxy stellar populations, which we can access using absorption-line spectroscopy. Here we explore the large LEGA-C survey (DR3) to investigate the role of the environment and stellar mass on stellar populations at z~0.6-1.0 in the COSMOS field. Leveraging the statistical power and depth of LEGA-C, we reveal significant gradients in D4000 and H-delta equivalent widths (EWs) distributions over the stellar mass vs environment 2D spaces for the massive galaxy population (M>10^10 M) at z~0.6-1.0. D4000 and H-delta EWs primarily depend on stellar mass, but they also depend on environment at fixed stellar mass. By splitting the sample into centrals and…
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