Joint constraints on cosmology and the impact of baryon feedback: combining KiDS-1000 lensing with the thermal Sunyaev-Zeldovich effect from Planck and ACT
Tilman Tr\"oster, Alexander J. Mead, Catherine Heymans, Ziang Yan,, David Alonso, Marika Asgari, Maciej Bilicki, Andrej Dvornik, Hendrik, Hildebrandt, Benjamin Joachimi, Arun Kannawadi, Konrad Kuijken, Peter, Schneider, HuanYuan Shan, Ludovic van Waerbeke, Angus H. Wright

TL;DR
This paper combines weak lensing and thermal Sunyaev-Zeldovich effect data to jointly constrain cosmology and baryon feedback, demonstrating the benefits of multi-probe analyses for breaking parameter degeneracies.
Contribution
It introduces a novel joint analysis method that integrates KiDS-1000 lensing with tSZ measurements, providing new constraints on baryon feedback and cosmological parameters.
Findings
Constraints are consistent with other low-redshift probes.
Lensing--tSZ cross-correlation amplitude is lower than Planck CMB constraints by ~2σ.
Joint analysis improves $S_8$ constraint by 40% over cosmic shear alone.
Abstract
We conduct a pseudo- analysis of the tomographic cross-correlation between 1000 deg of weak lensing data from the Kilo-Degree Survey (KiDS-1000) and the thermal Sunyaev-Zeldovich (tSZ) effect measured by Planck and the Atacama Cosmology Telescope (ACT). Using HMx, a halo-model-based approach that consistently models the gas, star, and dark matter components, we are able to derive constraints on both cosmology and baryon feedback for the first time from these data, marginalising over redshift uncertainties, intrinsic alignment of galaxies, and contamination by the cosmic infrared background (CIB). We find our results to be insensitive to the CIB, while intrinsic alignment provides a small but significant contribution to the lensing--tSZ cross-correlation. The cosmological constraints are consistent with those of other low-redshift probes and prefer strong baryon feedback. The…
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