Homology reveals significant anisotropy in the cosmic microwave background
Pratyush Pranav, Thomas Buchert

TL;DR
This study uses homology analysis to test the statistical isotropy of the cosmic microwave background, revealing significant anisotropy especially in the northern hemisphere, which could impact cosmological parameter estimates.
Contribution
It introduces a homology-based method to detect anisotropy in CMB maps and highlights hemisphere-dependent discrepancies that challenge the assumption of isotropy in the standard cosmological model.
Findings
Northern hemisphere shows >3.5 s.d. discrepancy with local normalization.
Southern hemisphere remains consistent with the model.
Major anisotropy source identified in the first quadrant of the sphere.
Abstract
We test the tenet of statistical isotropy of the standard cosmological model via a homology analysis of the cosmic microwave background temperature maps. Examining small sectors of the normalized maps, we find that the results exhibit a dependence on whether we compute the mean and variance locally from the masked patch, or from the full masked sky. Assigning local mean and variance for normalization, we find the maximum discrepancy between the data and model in the galactic northern hemisphere at more than s.d. for the PR4 dataset at degree-scale. For the PR3 dataset, the C-R and SMICA maps exhibit higher significance than the PR4 dataset at and s.d. respectively, however the NILC and SEVEM maps exhibit lower significance at s.d. The southern hemisphere exhibits high degree of consistency between the data and the model for both the PR4 and PR3 datasets.…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Morphological variations and asymmetry · Remote Sensing in Agriculture
