Abstract

The treatment of unknown foreground contaminations will be one of the major challenges for galaxy clustering analyses of coming decadal surveys. These data contaminations introduce erroneous large-scale effects in recovered power spectra and inferred dark matter density fields. In this work, we present an effective solution to this problem in the form of a robust likelihood designed to account for effects due to unknown foreground and target contaminations. Conceptually, this robust likelihood marginalizes over the unknown large-scale contamination amplitudes. We showcase the effectiveness of this novel likelihood via an application to a mock SDSS-III data set subject to dust extinction contamination. In order to illustrate the performance of our proposed likelihood, we infer the underlying dark-matter density field and reconstruct the matter power spectrum, being maximally agnostic about the foregrounds. The results are compared to those of an analysis with a standard Poissonian likelihood, as typically used in modern large-scale structure analyses. While the standard Poissonian analysis yields excessive power for large-scale modes and introduces an overall bias in the power spectrum, our likelihood provides unbiased estimates of the matter power spectrum over the entire range of Fourier modes considered in this work. Further, we demonstrate that our approach accurately accounts for and corrects the effects of unknown foreground contaminations when inferring three-dimensional density fields. Robust likelihood approaches, as presented in this work, will be crucial to control unknown systematic error and maximize the outcome of the decadal surveys.

Highlights

  • The generation of galaxy surveys such as Large Synoptic Survey Telescope (LSST; Ivezicet al. 2019) or Euclid (Laureijs et al 2011; Amendola et al 2018; Racca et al 2016) will not be limited by noise but by systematic effects

  • We compare the performance of our novel likelihood with that of the standard Poissonian likelihood typically employed in large-scale structure analyses

  • In order to test the effectiveness of our likelihood against unknown systematic errors and foreground contaminations, the algorithm is agnostic about the contamination and assumes the CMASS sky completeness depicted in the left panel of Fig. 4

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Summary

Introduction

The generation of galaxy surveys such as Large Synoptic Survey Telescope (LSST; Ivezicet al. 2019) or Euclid (Laureijs et al 2011; Amendola et al 2018; Racca et al 2016) will not be limited by noise but by systematic effects. These data contaminations introduce erroneous large-scale effects in recovered power spectra and inferred dark matter density fields. This robust likelihood marginalizes over the unknown large-scale contamination amplitudes.

Results
Conclusion
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