Optimal CMB Lensing Reconstruction and Parameter Estimation with SPTpol Data
M. Millea, C. M. Daley, T-L. Chou, E. Anderes, P. A. R. Ade, A. J., Anderson, J. E. Austermann, J. S. Avva, J. A. Beall, A. N. Bender, B. A., Benson, F. Bianchini, L. E. Bleem, J. E. Carlstrom, C. L. Chang, P. Chaubal,, H. C. Chiang, R. Citron, C. Corbett Moran, T. M. Crawford

TL;DR
This paper introduces a Bayesian method for optimal CMB lensing reconstruction and parameter estimation using SPTpol data, outperforming traditional quadratic estimators and enabling better systematic uncertainty handling.
Contribution
It presents the first simultaneous Bayesian inference and optimal lensing reconstruction from polarization data, improving precision and systematic control over previous methods.
Findings
Bayesian approach yields 17% smaller error bars on lensing amplitude.
Method reduces systematic uncertainty on polarization calibration to near zero.
Demonstrates potential for tighter constraints with future CMB experiments.
Abstract
We perform the first simultaneous Bayesian parameter inference and optimal reconstruction of the gravitational lensing of the cosmic microwave background (CMB), using 100 deg of polarization observations from the SPTpol receiver on the South Pole Telescope. These data reach noise levels as low as 5.8 K-arcmin in polarization, which are low enough that the typically used quadratic estimator (QE) technique for analyzing CMB lensing is significantly sub-optimal. Conversely, the Bayesian procedure extracts all lensing information from the data and is optimal at any noise level. We infer the amplitude of the gravitational lensing potential to be using the Bayesian pipeline, consistent with our QE pipeline result, but with 17\% smaller error bars. The Bayesian analysis also provides a simple way to account for systematic uncertainties, performing a…
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Taxonomy
TopicsCosmology and Gravitation Theories · Radio Astronomy Observations and Technology · Galaxies: Formation, Evolution, Phenomena
