Joint inference of multiplicative and additive systematics in galaxy density fluctuations and clustering measurements

Author:

Berlfein Federico12ORCID,Mandelbaum Rachel123ORCID,Dodelson Scott123,Schafer Chad234

Affiliation:

1. Department of Physics, Carnegie Mellon University , Pittsburgh, PA 15213 , USA

2. Department of Physics, McWilliams Center for Cosmology, Carnegie Mellon University , Pittsburgh, PA 15213 , USA

3. NSF AI Planning Institute, Carnegie Mellon University , Pittsburgh, PA 15213 , USA

4. Department of Statistics & Data Science, Carnegie Mellon University , Pittsburgh, PA 15213 , USA

Abstract

ABSTRACT Galaxy clustering measurements are a key probe of the matter density field in the Universe. With the era of precision cosmology upon us, surveys rely on precise measurements of the clustering signal for meaningful cosmological analysis. However, the presence of systematic contaminants can bias the observed galaxy number density, and thereby bias the galaxy two-point statistics. As the statistical uncertainties get smaller, correcting for these systematic contaminants becomes increasingly important for unbiased cosmological analysis. We present and validate a new method for understanding and mitigating both additive and multiplicative systematics in galaxy clustering measurements (two-point function) by joint inference of contaminants in the galaxy overdensity field (one-point function) using a maximum-likelihood estimator (MLE). We test this methodology with Kilo-Degree Survey-like mock galaxy catalogues and synthetic systematic template maps. We estimate the cosmological impact of such mitigation by quantifying uncertainties and possible biases in the inferred relationship between the observed and the true galaxy clustering signal. Our method robustly corrects the clustering signal to the sub-per cent level and reduces numerous additive and multiplicative systematics from $1.5 \sigma$ to less than $0.1\sigma$ for the scenarios we tested. In addition, we provide an empirical approach to identifying the functional form (additive, multiplicative, or other) by which specific systematics contaminate the galaxy number density. Even though this approach is tested and geared towards systematics contaminating the galaxy number density, the methods can be extended to systematics mitigation for other two-point correlation measurements.

Funder

Simons Foundation

Department of Energy

NSF

Publisher

Oxford University Press (OUP)

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