Towards solving model bias in cosmic shear forward modeling [CEA]

http://arxiv.org/abs/2210.16243


As the volume and quality of modern galaxy surveys increase, so does the difficulty of measuring the cosmological signal imprinted in galaxy shapes. Weak gravitational lensing sourced by the most massive structures in the Universe generates a slight shearing of galaxy morphologies called cosmic shear, key probe for cosmological models. Modern techniques of shear estimation based on statistics of ellipticity measurements suffer from the fact that the ellipticity is not a well-defined quantity for arbitrary galaxy light profiles, biasing the shear estimation. We show that a hybrid physical and deep learning Hierarchical Bayesian Model, where a generative model captures the galaxy morphology, enables us to recover an unbiased estimate of the shear on realistic galaxies, thus solving the model bias.

Read this paper on arXiv…

B. Remy, F. Lanusse and J. Starck
Mon, 31 Oct 22
51/60

Comments: 6 pages, accepted to the Machine Learning and the Physical Sciences Workshop at NeurIPS 2022