Euclid preparation. LIII. LensMC, weak lensing cosmic shear measurement with forward modelling and Markov Chain Monte Carlo sampling
Euclid Collaboration: G. Congedo (1), L. Miller (2), A. N. Taylor (1),, N. Cross (1), C. A. J. Duncan (3, 2), T. Kitching (4), N. Martinet (5), S., Matthew (1), T. Schrabback (6), M. Tewes (7), N. Welikala (1), N. Aghanim, (8), A. Amara (9), S. Andreon (10), N. Auricchio (11)

TL;DR
LensMC is a novel forward-modeling method using MCMC for precise weak lensing shear measurements in Euclid-like surveys, effectively handling PSF convolution and marginalizing nuisance parameters for billions of galaxies.
Contribution
It introduces a new shear measurement approach combining forward modeling and MCMC, optimized for large-scale Euclid data with detailed bias analysis.
Findings
Achieved shear bias within Euclid requirements
Quantified measurement biases and PSF leakage
Demonstrated scalability to billions of galaxies
Abstract
LensMC is a weak lensing shear measurement method developed for Euclid and Stage-IV surveys. It is based on forward modelling in order to deal with convolution by a point spread function (PSF) with comparable size to many galaxies; sampling the posterior distribution of galaxy parameters via Markov Chain Monte Carlo; and marginalisation over nuisance parameters for each of the 1.5 billion galaxies observed by Euclid. We quantified the scientific performance through high-fidelity images based on the Euclid Flagship simulations and emulation of the Euclid VIS images; realistic clustering with a mean surface number density of 250 arcmin () for galaxies, and 6 arcmin () for stars; and a diffraction-limited chromatic PSF with a full width at half maximum of and spatial variation across the field of view. LensMC measured…
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