Parameterization of Stochasticity in Galaxy Clustering and Reconstruction of Tomographic Matter Clustering
Shuren Zhou, Pengjie Zhang

TL;DR
This paper develops a parameterization method for stochasticity in galaxy clustering, improving matter clustering reconstruction accuracy and enabling precise cosmological parameter estimation.
Contribution
It introduces a quadratic parameterization scheme for the galaxy-matter cross correlation coefficient, enhancing stochasticity modeling in galaxy clustering analyses.
Findings
Quadratic scheme $r^2_s(k) = 1+c_1 k+c_2 k^2$ achieves better than 1% accuracy.
Accurate stochasticity modeling reduces systematic bias in matter clustering reconstruction.
Reconstruction method forecasts 1.5% precision on $S_8$ constraint.
Abstract
The stochasticity in galaxy clustering, the mismatch between galaxy and underlying matter distribution, suppresses the matter clustering amplitude reconstructed by the combination of galaxy auto-correlation and galaxy-galaxy lensing cross-correlation. In this work, we solve the stochasticity systematics by parameterizing the cross correlation coefficient between galaxy and matter. We investigate the performance of 12 kinds of parameterization schemes, against the cosmoDC2 TNG300-1 galaxy samples over a wide range of redshift and flux cut. The 2-parameter fits are found to describe the stochasticity up to , while the best performing quadratic scheme reaches better than accuracy for both the direct fit and reconstructing matter clustering. Then, we apply the accurate quadratic scheme to forecast…
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Taxonomy
TopicsAdvanced Clustering Algorithms Research · Medical Image Segmentation Techniques · Geochemistry and Geologic Mapping
