Absence of significant cross-correlation between WMAP and SDSS
M. Lopez-Corredoira, F. Sylos Labini, J. Betancort-Rijo

TL;DR
This study reevaluates the claimed cross-correlation between WMAP microwave anisotropies and SDSS galaxy data, finding no significant evidence of the integrated Sachs-Wolfe effect after accounting for field-to-field fluctuations and re-sampling errors.
Contribution
The paper introduces a new method to measure errors as a function of the integral of the product of self-correlations, clarifying the impact of field-to-field fluctuations on cross-correlation analyses.
Findings
Re-sampling methods underestimate errors.
Field-to-field fluctuations dominate the signals.
No significant detection of the ISW effect was confirmed.
Abstract
AIMS. Several authors have claimed to detect a significant cross-correlation between microwave WMAP anisotropies and the SDSS galaxy distribution. We repeat these analyses to determine the different cross-correlation uncertainties caused by re-sampling errors and field-to-field fluctuations. The first type of error concerns overlapping sky regions, while the second type concerns non-overlapping sky regions. METHODS. To measure the re-sampling errors, we use bootstrap and jack-knife techniques. For the field-to-field fluctuations, we use three methods: 1) evaluation of the dispersion in the cross-correlation when correlating separated regions of WMAP with the original region of SDSS; 2) use of mock Monte Carlo WMAP maps; 3) a new method (developed in this article), which measures the error as a function of the integral of the product of the self-correlations for each map. RESULTS. The…
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Taxonomy
TopicsCosmology and Gravitation Theories · Relativity and Gravitational Theory · Statistical and numerical algorithms
