A New Wavelet Scattering Transform-Based Statistic for Cosmological Analysis of Large-Scale Structure

Abstract

Large-scale structure (LSS) analysis in galaxy surveys is a powerful cosmological probe but is limited by tracer bias, which can obscure underlying information and weaken parameter constraints. Existing methods either model bias or restrict analyses to low-density regions, yet their sensitivity to bias remains poorly understood. We propose a novel method based on the wavelet scattering transform (WST) to distinguish LSS across cosmological models while mitigating tracer bias. Central to our approach are the WST m-mode ratios, R wst, a new statistical measure, and a high-density apodization preprocessing that smoothly rescales extreme values. We use a reduced chi-square to assess the cosmological parameter constraints and find that R wst, in the scale range j ∈ [3,7], achieves 2, cos ≈ 6 for cosmology while maintaining 2, bias 1--a regime unattained by other statistics. R wst thus provides robust cosmological sensitivity with effective bias mitigation for future surveys.

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