CFHTLenS: Mapping the Large Scale Structure with Gravitational Lensing
Ludovic Van Waerbeke, Jonathan Benjamin, Thomas Erben, Catherine, Heymans, Hendrik Hildebrandt, Henk Hoekstra, Thomas D. Kitching, Yannick, Mellier, Lance Miller, Jean Coupon, Joachim Harnois-D\'eraps, Liping Fu,, Michael J. Hudson, Martin Kilbinger, Konrad Kuijken

TL;DR
This paper analyzes large-scale mass maps from gravitational lensing data, demonstrating their potential to provide unique cosmological insights beyond traditional statistical methods, validated through simulations and real data from CFHTLenS.
Contribution
It introduces a quantitative framework for analyzing lensing mass maps, validating their robustness, and exploring their use in novel cosmological techniques.
Findings
Mass maps contain unique cosmological information.
The 2-point correlation function aligns with previous shear analyses.
Detection of third and marginal fourth order moments.
Abstract
We present a quantitative analysis of the largest contiguous maps of projected mass density obtained from gravitational lensing shear. We use data from the 154 deg2 covered by the Canada-France-Hawaii Telescope Lensing Survey. Our study is the first attempt to quantitatively characterize the scientific value of lensing maps, which could serve in the future as a complementary approach to the study of the dark universe with gravitational lensing. We show that mass maps contain unique cosmological information beyond that of traditional two-points statistical analysis techniques. Using a series of numerical simulations, we first show how, reproducing the CFHTLenS observing conditions, gravitational lensing inversion provides a reliable estimate of the projected matter distribution of large scale structure. We validate our analysis by quantifying the robustness of the maps with various…
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