The dark matter halo masses of elliptical galaxies as a function of observationally robust quantities
Alessandro Sonnenfeld (1), Crescenzo Tortora (2), Henk Hoekstra (1),, Marika Asgari (3, 4), Maciej Bilicki (5), Catherine Heymans (3, 6), Hendrik, Hildebrandt (6), Koen Kuijken (1), Nicola R. Napolitano (7, 8), Nivya Roy, (9), Edwin Valentijn (10)

TL;DR
This study uses weak gravitational lensing to examine how the dark matter halo mass of elliptical galaxies relates to robustly measurable properties like surface brightness and colour, finding no significant correlation.
Contribution
It introduces a robust analysis of the relationship between dark matter halo mass and galaxy properties using weak lensing and a Bayesian hierarchical approach, focusing on parameters that are observationally reliable.
Findings
No correlation between halo mass and galaxy size at fixed luminosity.
No correlation between halo mass and galaxy colour at fixed luminosity.
Star formation efficiency appears independent of galaxy size and colour.
Abstract
Context. The assembly history of the stellar component of a massive elliptical galaxy is closely related to that of its dark matter halo. Measuring how the properties of galaxies correlate with their halo mass can help understand their evolution. Aims. We investigate how the dark matter halo mass of elliptical galaxies varies as a function of their properties, using weak gravitational lensing observations. To minimise the chances of biases, we focus on galaxy properties that can be determined robustly: the surface brightness profile and the colour. Methods. We selected 2409 central massive elliptical galaxies from the SDSS spectroscopic sample. We first measured their surface brightness profile and colours by fitting Sersic models to photometric data from the Kilo-Degree Survey (KiDS). We fitted their halo mass distribution as a function of redshift, rest-frame band luminosity,…
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