Cosmological Constraints from Weak Lensing Peaks: Can Halo Models Accurately Predict Peak Counts?
Alina Sabyr (1), Zolt\'an Haiman (1), Jos\'e Manuel Zorrilla Matilla, (2), Tianhuan Lu (1) ((1) Columbia University, (2) Princeton University)

TL;DR
This study evaluates the accuracy of halo-based models in predicting weak lensing peak counts and finds that non-halo contributions significantly impact cosmological parameter estimation.
Contribution
It demonstrates that halo-only models are insufficient for accurate WL peak predictions, highlighting the need to include non-halo structures for unbiased cosmological inference.
Findings
Halo-only models qualitatively reproduce peak counts but miss negative peaks.
Neglecting non-halo contributions biases cosmological parameters.
Including non-halo structures is essential for unbiased constraints.
Abstract
In order to extract full cosmological information from next-generation large and high-precision weak lensing (WL) surveys (e.g. Euclid, Roman, LSST), higher-order statistics that probe the small-scale, non-linear regime of large scale structure (LSS) need to be utilized. WL peak counts, which trace overdensities in the cosmic web, are one promising and simple statistic for constraining cosmological parameters. The physical origin of WL peaks have previously been linked to dark matter halos along the line of sight and this peak-halo connection has been used to develop various semi-analytic halo-based models for predicting peak counts. Here, we study the origin of WL peaks and the effectiveness of halo-based models for WL peak counts using a suite of ray-tracing N-body simulations. We compare WL peaks in convergence maps from the full simulations to those in maps created from only…
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