A Parameter-Masked Mock Data Challenge for Beyond-Two-Point Galaxy Clustering Statistics
Beyond-2pt Collaboration: Elisabeth Krause, Yosuke Kobayashi, Andr\'es, N. Salcedo, Mikhail M. Ivanov, Tom Abel, Kazuyuki Akitsu, Raul E. Angulo,, Giovanni Cabass, Sofia Contarini, Carolina Cuesta-Lazaro, ChangHoon Hahn,, Nico Hamaus, Donghui Jeong, Chirag Modi, Nhat-Minh Nguyen

TL;DR
This paper presents a benchmark for advanced galaxy clustering analysis techniques beyond traditional two-point statistics, demonstrating their effectiveness in recovering cosmological parameters from mock data.
Contribution
It introduces a community data challenge for testing novel beyond-2pt galaxy clustering methods and evaluates their performance in parameter estimation.
Findings
Multiple methods successfully recovered unbiased cosmological parameters.
The challenge demonstrated the credibility of beyond-2pt techniques for cosmology.
The dataset and results are publicly available for further research.
Abstract
The last few years have seen the emergence of a wide array of novel techniques for analyzing high-precision data from upcoming galaxy surveys, which aim to extend the statistical analysis of galaxy clustering data beyond the linear regime and the canonical two-point (2pt) statistics. We test and benchmark some of these new techniques in a community data challenge "Beyond-2pt", initiated during the Aspen 2022 Summer Program "Large-Scale Structure Cosmology beyond 2-Point Statistics," whose first round of results we present here. The challenge dataset consists of high-precision mock galaxy catalogs for clustering in real space, redshift space, and on a light cone. Participants in the challenge have developed end-to-end pipelines to analyze mock catalogs and extract unknown ("masked") cosmological parameters of the underlying CDM models with their methods. The methods represented…
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