Theoretical wavelet $\ell_1$-norm from one-point PDF prediction
Vilasini Tinnaneri Sreekanth, Sandrine Codis, Alexandre Barthelemy,, Jean-Luc Starck

TL;DR
This paper introduces a theoretical framework based on Large-Deviation theory to predict the wavelet $$-norm of weak lensing convergence maps, enabling more efficient cosmological parameter inference without extensive simulations.
Contribution
It provides the first theoretical prediction of the wavelet $$-norm from one-point PDF for convergence maps, linking it to cosmological dependence and validating accuracy with simulations.
Findings
High accuracy of the prediction in the weakly non-linear regime
The wavelet $$-norm captures cosmological dependence effectively
The approach reduces reliance on resource-intensive simulations
Abstract
Weak gravitational lensing, resulting from the bending of light due to the presence of matter along the line of sight, is a potent tool for exploring large-scale structures, particularly in quantifying non-Gaussianities. It stands as a pivotal objective for upcoming surveys. In the realm of current and forthcoming full-sky weak-lensing surveys, the convergence maps, representing a line-of-sight integration of the matter density field up to the source redshift, facilitate field-level inference, providing an advantageous avenue for cosmological exploration. Traditional two-point statistics fall short of capturing non-Gaussianities, necessitating the use of higher-order statistics to extract this crucial information. Among the various higher-order statistics available, the wavelet -norm has proven its efficiency in inferring cosmology (Ajani et al.2021). However, the lack of a…
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Taxonomy
TopicsAdaptive optics and wavefront sensing · Galaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research
