Mitigating the noise of DESI mocks using analytic control variates
Boryana Hadzhiyska, Martin J. White, Xinyi Chen, Lehman H. Garrison,, Joseph DeRose, Nikhil Padmanabhan, Cristhian Garcia-Quintero, Juan, Mena-Fern\'andez, Shi-Fan Chen, Hee-Jong Seo, Patrick McDonald, Jessica, Aguilar, Steven Ahlen, David Brooks, Todd Claybaugh

TL;DR
This paper introduces a variance reduction method using analytic control variates to improve the accuracy of large-scale structure measurements from galaxy simulations, specifically for DESI mock catalogs.
Contribution
It develops and applies control variate techniques to reduce measurement errors in galaxy mock catalogs, enhancing the analysis pipeline for upcoming DESI data.
Findings
Achieved 5-10 times reduction in measurement error.
Provided an open-source package for CV application and analysis.
Demonstrated speed improvements over existing tools.
Abstract
In order to address fundamental questions related to the expansion history of the Universe and its primordial nature with the next generation of galaxy experiments, we need to model reliably large-scale structure observables such as the correlation function and the power spectrum. Cosmological -body simulations provide a reference through which we can test our models, but their output suffers from sample variance on large scales. Fortunately, this is the regime where accurate analytic approximations exist. To reduce the variance, which is key to making optimal use of these simulations, we can leverage the accuracy and precision of such analytic descriptions using Control Variates (CV). The power of control variates stems from utilizing inexpensive but highly correlated surrogates of the statistics one wishes to measure. The stronger the correlation between the surrogate and the…
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