TDCOSMO IV: Hierarchical time-delay cosmography -- joint inference of the Hubble constant and galaxy density profiles
S. Birrer, A. J. Shajib, A. Galan, M. Millon, T. Treu, A. Agnello, M., Auger, G. C.-F. Chen, L. Christensen, T. Collett, F. Courbin, C. D., Fassnacht, L. V. E. Koopmans, P. J. Marshall, J.-W. Park, C. E. Rusu, D., Sluse, C. Spiniello, S. H. Suyu, S. Wagner-Carena, K. C. Wong

TL;DR
This paper introduces a hierarchical method to jointly infer the Hubble constant and galaxy density profiles from gravitational lensing data, reducing uncertainties related to mass profile assumptions and validating the approach with simulations.
Contribution
It presents a novel hierarchical inference framework that constrains the mass-sheet transform effect using stellar kinematics, improving the robustness of $H_0$ measurements from lensing.
Findings
Measured $H_0=67.4^{+4.1}_{-3.2}$ km/s/Mpc from combined TDCOSMO and SLACS data.
Validated the hierarchical approach on simulated lenses, demonstrating its effectiveness.
Found that the joint analysis prefers slightly shallower mass profiles than previous models.
Abstract
The H0LiCOW collaboration inferred via gravitational lensing time delays a Hubble constant km s, describing deflector mass density profiles by either a power-law or stars plus standard dark matter halos. The mass-sheet transform (MST) that leaves the lensing observables unchanged is considered the dominant source of residual uncertainty in . We quantify any potential effect of the MST with flexible mass models that are maximally degenerate with H0. Our calculation is based on a new hierarchical approach in which the MST is only constrained by stellar kinematics. The approach is validated on hydrodynamically simulated lenses. We apply the method to the TDCOSMO sample of 7 lenses (6 from H0LiCOW) and measure km s. In order to further constrain the deflector mass profiles, we then add imaging…
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